fbpx
Wikipedia

g factor (psychometrics)

The g factor (also known as general intelligence, general mental ability or general intelligence factor) is a construct developed in psychometric investigations of cognitive abilities and human intelligence. It is a variable that summarizes positive correlations among different cognitive tasks, reflecting the fact that an individual's performance on one type of cognitive task tends to be comparable to that person's performance on other kinds of cognitive tasks. The g factor typically accounts for 40 to 50 percent of the between-individual performance differences on a given cognitive test, and composite scores ("IQ scores") based on many tests are frequently regarded as estimates of individuals' standing on the g factor.[1] The terms IQ, general intelligence, general cognitive ability, general mental ability, and simply intelligence are often used interchangeably to refer to this common core shared by cognitive tests.[2] However, the g factor itself is a mathematical construct indicating the level of observed correlation between cognitive tasks.[3] The measured value of this construct depends on the cognitive tasks that are used, and little is known about the underlying causes of the observed correlations.

The existence of the g factor was originally proposed by the English psychologist Charles Spearman in the early years of the 20th century. He observed that children's performance ratings, across seemingly unrelated school subjects, were positively correlated, and reasoned that these correlations reflected the influence of an underlying general mental ability that entered into performance on all kinds of mental tests. Spearman suggested that all mental performance could be conceptualized in terms of a single general ability factor, which he labeled g, and many narrow task-specific ability factors. Soon after Spearman proposed the existence of g, it was challenged by Godfrey Thomson, who presented evidence that such intercorrelations among test results could arise even if no g-factor existed.[4] Today's factor models of intelligence typically represent cognitive abilities as a three-level hierarchy, where there are many narrow factors at the bottom of the hierarchy, a handful of broad, more general factors at the intermediate level, and at the apex a single factor, referred to as the g factor, which represents the variance common to all cognitive tasks.

Traditionally, research on g has concentrated on psychometric investigations of test data, with a special emphasis on factor analytic approaches. However, empirical research on the nature of g has also drawn upon experimental cognitive psychology and mental chronometry, brain anatomy and physiology, quantitative and molecular genetics, and primate evolution.[5] Scientists consider g to be a statistical regularity and uncontroversial, and a general cognitive factor appears in data collected from people in nearly every human culture.[6] Yet, there is no consensus as to what causes the positive correlations between tests.

Research in the field of behavioral genetics has shown that the construct of g is highly heritable in measured populations. It has a number of other biological correlates, including brain size. It is also a significant predictor of individual differences in many social outcomes, particularly in education and employment. However, critics of g have contended that an emphasis on g is misplaced and entails a devaluation of other important abilities. Stephen J. Gould famously denounced the concept of g as supporting an unrealistic reified view of human intelligence.

Cognitive ability testing edit

Spearman's correlation matrix for six measures of school performance. All the correlations are positive, the positive manifold phenomenon. The bottom row shows the g loadings of each performance measure.[7]
Classics French English Math Pitch Music
Classics
French .83
English .78 .67
Math .70 .67 .64
Pitch discrimination .66 .65 .54 .45
Music .63 .57 .51 .51 .40
g .958 .882 .803 .750 .673 .646
Subtest intercorrelations in a sample of Scottish subjects who completed the WAIS-R battery. The subtests are Vocabulary, Similarities, Information, Comprehension, Picture arrangement, Block design, Arithmetic, Picture completion, Digit span, Object assembly, and Digit symbol. The bottom row shows the g loadings of each subtest. [8]
V S I C PA BD A PC DSp OA DS
V
S .67 -
I .72 .59 -
C .70 .58 .59 -
PA .51 .53 .50 .42 -
BD .45 .46 .45 .39 .43 -
A .48 .43 .55 .45 .41 .44
PC .49 .52 .52 .46 .48 .45 .30 -
DSp .46 .40 .36 .36 .31 .32 .47 .23 -
OA .32 .40 .32 .29 .36 .58 .33 .41 .14 -
DS .32 .33 .26 .30 .28 .36 .28 .26 .27 .25 -
g .83 .80 .80 .75 .70 .70 .68 .68 .56 .56 .48
 
Correlations between mental tests

Cognitive ability tests are designed to measure different aspects of cognition. Specific domains assessed by tests include mathematical skill, verbal fluency, spatial visualization, and memory, among others. However, individuals who excel at one type of test tend to excel at other kinds of tests, too, while those who do poorly on one test tend to do so on all tests, regardless of the tests' contents.[9] The English psychologist Charles Spearman was the first to describe this phenomenon.[10] In a famous research paper published in 1904,[11] he observed that children's performance measures across seemingly unrelated school subjects were positively correlated. This finding has since been replicated numerous times. The consistent finding of universally positive correlation matrices of mental test results (or the "positive manifold"), despite large differences in tests' contents, has been described as "arguably the most replicated result in all psychology".[12] Zero or negative correlations between tests suggest the presence of sampling error or restriction of the range of ability in the sample studied.[13]

Using factor analysis or related statistical methods, it is possible to identify a single common factor that can be regarded as a summary variable characterizing the correlations between all the different tests in a test battery. Spearman referred to this common factor as the general factor, or simply g. (By convention, g is always printed as a lower case italic.) Mathematically, the g factor is a source of variance among individuals, which means that one cannot meaningfully speak of any one individual's mental abilities consisting of g or other factors to any specified degree. One can only speak of an individual's standing on g (or other factors) compared to other individuals in a relevant population.[13][14][15]

Different tests in a test battery may correlate with (or "load onto") the g factor of the battery to different degrees. These correlations are known as g loadings. An individual test taker's g factor score, representing their relative standing on the g factor in the total group of individuals, can be estimated using the g loadings. Full-scale IQ scores from a test battery will usually be highly correlated with g factor scores, and they are often regarded as estimates of g. For example, the correlations between g factor scores and full-scale IQ scores from David Wechsler's tests have been found to be greater than .95.[1][13][16] The terms IQ, general intelligence, general cognitive ability, general mental ability, or simply intelligence are frequently used interchangeably to refer to the common core shared by cognitive tests.[2]

The g loadings of mental tests are always positive and usually range between .10 and .90, with a mean of about .60 and a standard deviation of about .15. Raven's Progressive Matrices is among the tests with the highest g loadings, around .80. Tests of vocabulary and general information are also typically found to have high g loadings.[17][18] However, the g loading of the same test may vary somewhat depending on the composition of the test battery.[19]

The complexity of tests and the demands they place on mental manipulation are related to the tests' g loadings. For example, in the forward digit span test the subject is asked to repeat a sequence of digits in the order of their presentation after hearing them once at a rate of one digit per second. The backward digit span test is otherwise the same except that the subject is asked to repeat the digits in the reverse order to that in which they were presented. The backward digit span test is more complex than the forward digit span test, and it has a significantly higher g loading. Similarly, the g loadings of arithmetic computation, spelling, and word reading tests are lower than those of arithmetic problem solving, text composition, and reading comprehension tests, respectively.[13][20]

Test difficulty and g loadings are distinct concepts that may or may not be empirically related in any specific situation. Tests that have the same difficulty level, as indexed by the proportion of test items that are failed by test takers, may exhibit a wide range of g loadings. For example, tests of rote memory have been shown to have the same level of difficulty but considerably lower g loadings than many tests that involve reasoning.[20][21]

Theories edit

While the existence of g as a statistical regularity is well-established and uncontroversial among experts, there is no consensus as to what causes the positive intercorrelations. Several explanations have been proposed.[22]

Mental energy or efficiency edit

Charles Spearman reasoned that correlations between tests reflected the influence of a common causal factor, a general mental ability that enters into performance on all kinds of mental tasks. However, he thought that the best indicators of g were those tests that reflected what he called the eduction of relations and correlates, which included abilities such as deduction, induction, problem solving, grasping relationships, inferring rules, and spotting differences and similarities. Spearman hypothesized that g was equivalent with "mental energy". However, this was more of a metaphorical explanation, and he remained agnostic about the physical basis of this energy, expecting that future research would uncover the exact physiological nature of g.[23]

Following Spearman, Arthur Jensen maintained that all mental tasks tap into g to some degree. According to Jensen, the g factor represents a "distillate" of scores on different tests rather than a summation or an average of such scores, with factor analysis acting as the distillation procedure.[18] He argued that g cannot be described in terms of the item characteristics or information content of tests, pointing out that very dissimilar mental tasks may have nearly equal g loadings. Wechsler similarly contended that g is not an ability at all but rather some general property of the brain. Jensen hypothesized that g corresponds to individual differences in the speed or efficiency of the neural processes associated with mental abilities.[24] He also suggested that given the associations between g and elementary cognitive tasks, it should be possible to construct a ratio scale test of g that uses time as the unit of measurement.[25]

Sampling theory edit

The so-called sampling theory of g, originally developed by Edward Thorndike and Godfrey Thomson, proposes that the existence of the positive manifold can be explained without reference to a unitary underlying capacity. According to this theory, there are a number of uncorrelated mental processes, and all tests draw upon different samples of these processes. The intercorrelations between tests are caused by an overlap between processes tapped by the tests.[26][27] Thus, the positive manifold arises due to a measurement problem, an inability to measure more fine-grained, presumably uncorrelated mental processes.[15]

It has been shown that it is not possible to distinguish statistically between Spearman's model of g and the sampling model; both are equally able to account for intercorrelations among tests.[28] The sampling theory is also consistent with the observation that more complex mental tasks have higher g loadings, because more complex tasks are expected to involve a larger sampling of neural elements and therefore have more of them in common with other tasks.[29]

Some researchers have argued that the sampling model invalidates g as a psychological concept, because the model suggests that g factors derived from different test batteries simply reflect the shared elements of the particular tests contained in each battery rather than a g that is common to all tests. Similarly, high correlations between different batteries could be due to them measuring the same set of abilities rather than the same ability.[30]

Critics have argued that the sampling theory is incongruent with certain empirical findings. Based on the sampling theory, one might expect that related cognitive tests share many elements and thus be highly correlated. However, some closely related tests, such as forward and backward digit span, are only modestly correlated, while some seemingly completely dissimilar tests, such as vocabulary tests and Raven's matrices, are consistently highly correlated. Another problematic finding is that brain damage frequently leads to specific cognitive impairments rather than a general impairment one might expect based on the sampling theory.[15][31]

Mutualism edit

The "mutualism" model of g proposes that cognitive processes are initially uncorrelated, but that the positive manifold arises during individual development due to mutual beneficial relations between cognitive processes. Thus there is no single process or capacity underlying the positive correlations between tests. During the course of development, the theory holds, any one particularly efficient process will benefit other processes, with the result that the processes will end up being correlated with one another. Thus similarly high IQs in different persons may stem from quite different initial advantages that they had.[15][32] Critics have argued that the observed correlations between the g loadings and the heritability coefficients of subtests are problematic for the mutualism theory.[33]

Factor structure of cognitive abilities edit

 
An illustration of Spearman's two-factor intelligence theory. Each small oval is a hypothetical mental test. The blue areas correspond to test-specific variance (s), while the purple areas represent the variance attributed to g.

Factor analysis is a family of mathematical techniques that can be used to represent correlations between intelligence tests in terms of a smaller number of variables known as factors. The purpose is to simplify the correlation matrix by using hypothetical underlying factors to explain the patterns in it. When all correlations in a matrix are positive, as they are in the case of IQ, factor analysis will yield a general factor common to all tests. The general factor of IQ tests is referred to as the g factor, and it typically accounts for 40 to 50 percent of the variance in IQ test batteries.[34] The presence of correlations between many widely varying cognitive tests has often been taken as evidence for the existence of g, but McFarland (2012) showed that such correlations do not provide any more or less support for the existence of g than for the existence of multiple factors of intelligence.[35]

Charles Spearman developed factor analysis in order to study correlations between tests. Initially, he developed a model of intelligence in which variations in all intelligence test scores are explained by only two kinds of variables: first, factors that are specific to each test (denoted s); and second, a g factor that accounts for the positive correlations across tests. This is known as Spearman's two-factor theory. Later research based on more diverse test batteries than those used by Spearman demonstrated that g alone could not account for all correlations between tests. Specifically, it was found that even after controlling for g, some tests were still correlated with each other. This led to the postulation of group factors that represent variance that groups of tests with similar task demands (e.g., verbal, spatial, or numerical) have in common in addition to the shared g variance.[36]

 
An illustration of John B. Carroll's three stratum theory, an influential contemporary model of cognitive abilities. The broad abilities recognized by the model are fluid intelligence (Gf), crystallized intelligence (Gc), general memory and learning (Gy), broad visual perception (Gv), broad auditory perception (Gu), broad retrieval ability (Gr), broad cognitive speediness (Gs), and processing speed (Gt). Carroll regarded the broad abilities as different "flavors" of g.

Through factor rotation, it is, in principle, possible to produce an infinite number of different factor solutions that are mathematically equivalent in their ability to account for the intercorrelations among cognitive tests. These include solutions that do not contain a g factor. Thus factor analysis alone cannot establish what the underlying structure of intelligence is. In choosing between different factor solutions, researchers have to examine the results of factor analysis together with other information about the structure of cognitive abilities.[37]

There are many psychologically relevant reasons for preferring factor solutions that contain a g factor. These include the existence of the positive manifold, the fact that certain kinds of tests (generally the more complex ones) have consistently larger g loadings, the substantial invariance of g factors across different test batteries, the impossibility of constructing test batteries that do not yield a g factor, and the widespread practical validity of g as a predictor of individual outcomes. The g factor, together with group factors, best represents the empirically established fact that, on average, overall ability differences between individuals are greater than differences among abilities within individuals, while a factor solution with orthogonal factors without g obscures this fact. Moreover, g appears to be the most heritable component of intelligence.[38] Research utilizing the techniques of confirmatory factor analysis has also provided support for the existence of g.[37]

A g factor can be computed from a correlation matrix of test results using several different methods. These include exploratory factor analysis, principal components analysis (PCA), and confirmatory factor analysis. Different factor-extraction methods produce highly consistent results, although PCA has sometimes been found to produce inflated estimates of the influence of g on test scores.[19][39]

There is a broad contemporary consensus that cognitive variance between people can be conceptualized at three hierarchical levels, distinguished by their degree of generality. At the lowest, least general level there are many narrow first-order factors; at a higher level, there are a relatively small number – somewhere between five and ten – of broad (i.e., more general) second-order factors (or group factors); and at the apex, there is a single third-order factor, g, the general factor common to all tests.[40][41][42] The g factor usually accounts for the majority of the total common factor variance of IQ test batteries.[43] Contemporary hierarchical models of intelligence include the three stratum theory and the Cattell–Horn–Carroll theory.[44]

"Indifference of the indicator" edit

Spearman proposed the principle of the indifference of the indicator, according to which the precise content of intelligence tests is unimportant for the purposes of identifying g, because g enters into performance on all kinds of tests. Any test can therefore be used as an indicator of g.[6] Following Spearman, Arthur Jensen more recently argued that a g factor extracted from one test battery will always be the same, within the limits of measurement error, as that extracted from another battery, provided that the batteries are large and diverse.[45] According to this view, every mental test, no matter how distinctive, calls on g to some extent. Thus a composite score of a number of different tests will load onto g more strongly than any of the individual test scores, because the g components cumulate into the composite score, while the uncorrelated non-g components will cancel each other out. Theoretically, the composite score of an infinitely large, diverse test battery would, then, be a perfect measure of g.[46]

In contrast, L. L. Thurstone argued that a g factor extracted from a test battery reflects the average of all the abilities called for by the particular battery, and that g therefore varies from one battery to another and "has no fundamental psychological significance."[47] Along similar lines, John Horn argued that g factors are meaningless because they are not invariant across test batteries, maintaining that correlations between different ability measures arise because it is difficult to define a human action that depends on just one ability.[48][49]

To show that different batteries reflect the same g, one must administer several test batteries to the same individuals, extract g factors from each battery, and show that the factors are highly correlated. This can be done within a confirmatory factor analysis framework.[22] Wendy Johnson and colleagues have published two such studies.[50][51] The first found that the correlations between g factors extracted from three different batteries were .99, .99, and 1.00, supporting the hypothesis that g factors from different batteries are the same and that the identification of g is not dependent on the specific abilities assessed. The second study found that g factors derived from four of five test batteries correlated at between .95–1.00, while the correlations ranged from .79 to .96 for the fifth battery, the Cattell Culture Fair Intelligence Test (the CFIT). They attributed the somewhat lower correlations with the CFIT battery to its lack of content diversity for it contains only matrix-type items, and interpreted the findings as supporting the contention that g factors derived from different test batteries are the same provided that the batteries are diverse enough. The results suggest that the same g can be consistently identified from different test batteries.[40][52] This approach has been criticized by psychologist Lazar Stankov in the Handbook of Understanding and Measuring Intelligence, who councluded "Correlations between the g factors from different test batteries are not unity."[53]

A study authored by Scott Barry Kaufman and colleagues showed that the general factor extracted from the Woodjock-Johnson cognitive abilities test, and the general factor extracted from the Achievement test batteries are highly correlated, but not isomorphic. [54]

Population distribution edit

The form of the population distribution of g is unknown, because g cannot be measured on a ratio scale[clarification needed]. (The distributions of scores on typical IQ tests are roughly normal, but this is achieved by construction, i.e., by normalizing the raw scores.) It has been argued[who?] that there are nevertheless good reasons for supposing that g is normally distributed in the general population, at least within a range of ±2 standard deviations from the mean. In particular, g can be thought of as a composite variable that reflects the additive effects of many independent genetic and environmental influences, and such a variable should, according to the central limit theorem, follow a normal distribution.[55]

Spearman's law of diminishing returns edit

A number of researchers have suggested that the proportion of variation accounted for by g may not be uniform across all subgroups within a population. Spearman's law of diminishing returns (SLODR), also termed the cognitive ability differentiation hypothesis, predicts that the positive correlations among different cognitive abilities are weaker among more intelligent subgroups of individuals. More specifically, SLODR predicts that the g factor will account for a smaller proportion of individual differences in cognitive tests scores at higher scores on the g factor.

SLODR was originally proposed by Charles Spearman,[56] who reported that the average correlation between 12 cognitive ability tests was .466 in 78 normal children, and .782 in 22 "defective" children. Detterman and Daniel rediscovered this phenomenon in 1989.[57] They reported that for subtests of both the WAIS and the WISC, subtest intercorrelations decreased monotonically with ability group, ranging from approximately an average intercorrelation of .7 among individuals with IQs less than 78 to .4 among individuals with IQs greater than 122.[58]

SLODR has been replicated in a variety of child and adult samples who have been measured using broad arrays of cognitive tests. The most common approach has been to divide individuals into multiple ability groups using an observable proxy for their general intellectual ability, and then to either compare the average interrelation among the subtests across the different groups, or to compare the proportion of variation accounted for by a single common factor, in the different groups.[59] However, as both Deary et al. (1996).[59] and Tucker-Drob (2009)[60] have pointed out, dividing the continuous distribution of intelligence into an arbitrary number of discrete ability groups is less than ideal for examining SLODR. Tucker-Drob (2009)[60] extensively reviewed the literature on SLODR and the various methods by which it had been previously tested, and proposed that SLODR could be most appropriately captured by fitting a common factor model that allows the relations between the factor and its indicators to be nonlinear in nature. He applied such a factor model to a nationally representative data of children and adults in the United States and found consistent evidence for SLODR. For example, Tucker-Drob (2009) found that a general factor accounted for approximately 75% of the variation in seven different cognitive abilities among very low IQ adults, but only accounted for approximately 30% of the variation in the abilities among very high IQ adults.

A recent meta-analytic study by Blum and Holling[61] also provided support for the differentiation hypothesis. As opposed to most research on the topic, this work made it possible to study ability and age variables as continuous predictors of the g saturation, and not just to compare lower- vs. higher-skilled or younger vs. older groups of testees. Results demonstrate that the mean correlation and g loadings of cognitive ability tests decrease with increasing ability, yet increase with respondent age. SLODR, as described by Charles Spearman, could be confirmed by a g-saturation decrease as a function of IQ as well as a g-saturation increase from middle age to senescence. Specifically speaking, for samples with a mean intelligence that is two standard deviations (i.e., 30 IQ-points) higher, the mean correlation to be expected is decreased by approximately .15 points. The question remains whether a difference of this magnitude could result in a greater apparent factorial complexity when cognitive data are factored for the higher-ability sample, as opposed to the lower-ability sample. It seems likely that greater factor dimensionality should tend to be observed for the case of higher ability, but the magnitude of this effect (i.e., how much more likely and how many more factors) remains uncertain.

Practical validity edit

The extent of the practical validity of g as a predictor of educational, economic, and social outcomes is the subject of ongoing debate.[62] Some researchers have argued that it is more far-ranging and universal than any other known psychological variable,[63] and that the validity of g increases as the complexity of the measured task increases.[64][65] Others have argued that tests of specific abilities outperform g factor in analyses fitted to certain real-world situations.[66][67][68]

A test's practical validity is measured by its correlation with performance on some criterion external to the test, such as college grade-point average, or a rating of job performance. The correlation between test scores and a measure of some criterion is called the validity coefficient. One way to interpret a validity coefficient is to square it to obtain the variance accounted by the test. For example, a validity coefficient of .30 corresponds to 9 percent of variance explained. This approach has, however, been criticized as misleading and uninformative, and several alternatives have been proposed. One arguably more interpretable approach is to look at the percentage of test takers in each test score quintile who meet some agreed-upon standard of success. For example, if the correlation between test scores and performance is .30, the expectation is that 67 percent of those in the top quintile will be above-average performers, compared to 33 percent of those in the bottom quintile.[69][70]

Academic achievement edit

The predictive validity of g is most conspicuous in the domain of scholastic performance. This is apparently because g is closely linked to the ability to learn novel material and understand concepts and meanings.[64]

In elementary school, the correlation between IQ and grades and achievement scores is between .60 and .70. At more advanced educational levels, more students from the lower end of the IQ distribution drop out, which restricts the range of IQs and results in lower validity coefficients. In high school, college, and graduate school the validity coefficients are .50–.60, .40–.50, and .30–.40, respectively. The g loadings of IQ scores are high, but it is possible that some of the validity of IQ in predicting scholastic achievement is attributable to factors measured by IQ independent of g. According to research by Robert L. Thorndike, 80 to 90 percent of the predictable variance in scholastic performance is due to g, with the rest attributed to non-g factors measured by IQ and other tests.[71]

Achievement test scores are more highly correlated with IQ than school grades. This may be because grades are more influenced by the teacher's idiosyncratic perceptions of the student.[72] In a longitudinal English study, g scores measured at age 11 correlated with all the 25 subject tests of the national GCSE examination taken at age 16. The correlations ranged from .77 for the mathematics test to .42 for the art test. The correlation between g and a general educational factor computed from the GCSE tests was .81.[73]

Research suggests that the SAT, widely used in college admissions, is primarily a measure of g. A correlation of .82 has been found between g scores computed from an IQ test battery and SAT scores. In a study of 165,000 students at 41 U.S. colleges, SAT scores were found to be correlated at .47 with first-year college grade-point average after correcting for range restriction in SAT scores (the correlation rises to .55 when course difficulty is held constant, i.e., if all students attended the same set of classes).[69][74]

Job attainment edit

There is a high correlation of .90 to .95 between the prestige rankings of occupations, as rated by the general population, and the average general intelligence scores of people employed in each occupation. At the level of individual employees, the association between job prestige and g is lower – one large U.S. study reported a correlation of .65 (.72 corrected for attenuation). Mean level of g thus increases with perceived job prestige. It has also been found that the dispersion of general intelligence scores is smaller in more prestigious occupations than in lower level occupations, suggesting that higher level occupations have minimum g requirements.[75][76]

Job performance edit

Research indicates that tests of g are the best single predictors of job performance, with an average validity coefficient of .55 across several meta-analyses of studies based on supervisor ratings and job samples. The average meta-analytic validity coefficient for performance in job training is .63.[77] The validity of g in the highest complexity jobs (professional, scientific, and upper management jobs) has been found to be greater than in the lowest complexity jobs, but g has predictive validity even for the simplest jobs. Research also shows that specific aptitude tests tailored for each job provide little or no increase in predictive validity over tests of general intelligence. It is believed that g affects job performance mainly by facilitating the acquisition of job-related knowledge. The predictive validity of g is greater than that of work experience, and increased experience on the job does not decrease the validity of g.[64][75]

In a 2011 meta-analysis, researchers found that general cognitive ability (GCA) predicted job performance better than personality (Five factor model) and three streams of emotional intelligence. They examined the relative importance of these constructs on predicting job performance and found that cognitive ability explained most of the variance in job performance.[78] Other studies suggested that GCA and emotional intelligence have a linear independent and complementary contribution to job performance. Côté and Miners (2015)[79] found that these constructs are interrelated when assessing their relationship with two aspects of job performance: organisational citizenship behaviour (OCB) and task performance. Emotional intelligence is a better predictor of task performance and OCB when GCA is low and vice versa. For instance, an employee with low GCA will compensate his/her task performance and OCB, if emotional intelligence is high.

Although these compensatory effects favour emotional intelligence, GCA still remains as the best predictor of job performance. Several researchers have studied the correlation between GCA and job performance among different job positions. For instance, Ghiselli (1973)[80] found that salespersons had a higher correlation than sales clerk. The former obtained a correlation of 0.61 for GCA, 0.40 for perceptual ability and 0.29 for psychomotor abilities; whereas sales clerk obtained a correlation of 0.27 for GCA, 0.22 for perceptual ability and 0.17 for psychomotor abilities.[81] Other studies compared GCA – job performance correlation between jobs of different complexity. Hunter and Hunter (1984)[82] developed a meta-analysis with over 400 studies and found that this correlation was higher for jobs of high complexity (0.57). Followed by jobs of medium complexity (0.51) and low complexity (0.38).

Job performance is measured by objective rating performance and subjective ratings. Although the former is better than subjective ratings, most of studies in job performance and GCA have been based on supervisor performance ratings. This rating criterion is considered problematic and unreliable, mainly because of its difficulty to define what is a good and bad performance. Rating of supervisors tends to be subjective and inconsistent among employees.[83] Additionally, supervisor rating of job performance is influenced by different factors, such as halo effect,[84] facial attractiveness,[85] racial or ethnic bias, and height of employees.[86] However, Vinchur, Schippmann, Switzer and Roth (1998)[81] found in their study with sales employees that objective sales performance had a correlation of 0.04 with GCA, while supervisor performance rating got a correlation of 0.40. These findings were surprising, considering that the main criterion for assessing these employees would be the objective sales.

In understanding how GCA is associated job performance, several researchers concluded that GCA affects acquisition of job knowledge, which in turn improves job performance. In other words, people high in GCA are capable to learn faster and acquire more job knowledge easily, which allow them to perform better. Conversely, lack of ability to acquire job knowledge will directly affect job performance. This is due to low levels of GCA. Also, GCA has a direct effect on job performance. In a daily basis, employees are exposed constantly to challenges and problem solving tasks, which success depends solely on their GCA. These findings are discouraging for governmental entities in charge of protecting rights of workers.[87] Because of the high correlation of GCA on job performance, companies are hiring employees based on GCA tests scores. Inevitably, this practice is denying the opportunity to work to many people with low GCA.[88] Previous researchers have found significant differences in GCA between race / ethnicity groups. For instance, there is a debate whether studies were biased against Afro-Americans, who scored significantly lower than white Americans in GCA tests.[89] However, findings on GCA-job performance correlation must be taken carefully. Some researchers have warned the existence of statistical artifacts related to measures of job performance and GCA test scores. For example, Viswesvaran, Ones and Schmidt (1996)[90] argued that is quite impossible to obtain perfect measures of job performance without incurring in any methodological error. Moreover, studies on GCA and job performance are always susceptible to range restriction, because data is gathered mostly from current employees, neglecting those that were not hired. Hence, sample comes from employees who successfully passed hiring process, including measures of GCA.[91]

Income edit

The correlation between income and g, as measured by IQ scores, averages about .40 across studies. The correlation is higher at higher levels of education and it increases with age, stabilizing when people reach their highest career potential in middle age. Even when education, occupation and socioeconomic background are held constant, the correlation does not vanish.[92]

Other correlates edit

The g factor is reflected in many social outcomes. Many social behavior problems, such as dropping out of school, chronic welfare dependency, accident proneness, and crime, are negatively correlated with g independent of social class of origin.[93] Health and mortality outcomes are also linked to g, with higher childhood test scores predicting better health and mortality outcomes in adulthood (see Cognitive epidemiology).[94]

In 2004, psychologist Satoshi Kanazawa argued that g was a domain-specific, species-typical, information processing psychological adaptation,[95] and in 2010, Kanazawa argued that g correlated only with performance on evolutionarily unfamiliar rather than evolutionarily familiar problems, proposing what he termed the "Savanna-IQ interaction hypothesis".[96][97] In 2006, Psychological Review published a comment reviewing Kanazawa's 2004 article by psychologists Denny Borsboom and Conor Dolan that argued that Kanazawa's conception of g was empirically unsupported and purely hypothetical and that an evolutionary account of g must address it as a source of individual differences,[98] and in response to Kanazawa's 2010 article, psychologists Scott Barry Kaufman, Colin G. DeYoung, Deirdre Reis, and Jeremy R. Gray published a study in 2011 in Intelligence of 112 subjects taking a 70-item computer version of the Wason selection task (a logic puzzle) in a social relations context as proposed by evolutionary psychologists Leda Cosmides and John Tooby in The Adapted Mind,[99] and found instead that "performance on non-arbitrary, evolutionarily familiar problems is more strongly related to general intelligence than performance on arbitrary, evolutionarily novel problems".[100][101]

Genetic and environmental determinants edit

Heritability is the proportion of phenotypic variance in a trait in a population that can be attributed to genetic factors. The heritability of g has been estimated to fall between 40 and 80 percent using twin, adoption, and other family study designs as well as molecular genetic methods. Estimates based on the totality of evidence place the heritability of g at about 50%.[102] It has been found to increase linearly with age. For example, a large study involving more than 11,000 pairs of twins from four countries reported the heritability of g to be 41 percent at age nine, 55 percent at age twelve, and 66 percent at age seventeen. Other studies have estimated that the heritability is as high as 80 percent in adulthood, although it may decline in old age. Most of the research on the heritability of g has been conducted in the United States and Western Europe, but studies in Russia (Moscow), the former East Germany, Japan, and rural India have yielded similar estimates of heritability as Western studies.[40][103][104][105]

As with heritability in general, the heritability of g can be understood in reference to a specific population at a specific place and time, and findings for one population do not apply to a different population that is exposed to different environmental factors.[106] A population that is exposed to strong environmental factors can be expected to have a lower level of heritability than a population that is exposed to only weak environmental factors. For example, one twin study found that genotype differences almost completely explain the variance in IQ scores within affluent families, but make close to zero contribution towards explaining IQ score differences in impoverished families.[107] Notably, heritability findings also only refer to total variation within a population and do not support a genetic explanation for differences between groups.[108] It is theoretically possible for the differences between the average g of two groups to be 100% due to environmental factors even if the variance within each group is 100% heritable.

Behavioral genetic research has also established that the shared (or between-family) environmental effects on g are strong in childhood, but decline thereafter and are negligible in adulthood. This indicates that the environmental effects that are important to the development of g are unique and not shared between members of the same family.[104]

The genetic correlation is a statistic that indicates the extent to which the same genetic effects influence two different traits. If the genetic correlation between two traits is zero, the genetic effects on them are independent, whereas a correlation of 1.0 means that the same set of genes explains the heritability of both traits (regardless of how high or low the heritability of each is). Genetic correlations between specific mental abilities (such as verbal ability and spatial ability) have been consistently found to be very high, close to 1.0. This indicates that genetic variation in cognitive abilities is almost entirely due to genetic variation in whatever g is. It also suggests that what is common among cognitive abilities is largely caused by genes, and that independence among abilities is largely due to environmental effects. Thus it has been argued that when genes for intelligence are identified, they will be "generalist genes", each affecting many different cognitive abilities.[104][109][110]

Much research points to g being a highly polygenic trait influenced by many common genetic variants, each having only small effects. Another possibility is that heritable differences in g are due to individuals having different "loads" of rare, deleterious mutations, with genetic variation among individuals persisting due to mutation–selection balance.[110][111]

A number of candidate genes have been reported to be associated with intelligence differences, but the effect sizes have been small and almost none of the findings have been replicated. No individual genetic variants have been conclusively linked to intelligence in the normal range so far. Many researchers believe that very large samples will be needed to reliably detect individual genetic polymorphisms associated with g.[40][111] However, while genes influencing variation in g in the normal range have proven difficult to find, many single-gene disorders with intellectual disability among their symptoms have been discovered.[112]

It has been suggested that the g loading of mental tests have been found to correlate with heritability,[33] but both the empirical data and statistical methodology bearing on this question are matters of active controversy.[113][114][115] Several studies suggest that tests with larger g loadings are more affected by inbreeding depression lowering test scores.[citation needed] There is also evidence that tests with larger g loadings are associated with larger positive heterotic effects on test scores, which has been suggested to indicate the presence of genetic dominance effects for g.[116]

Neuroscientific findings edit

g has a number of correlates in the brain. Studies using magnetic resonance imaging (MRI) have established that g and total brain volume are moderately correlated (r~.3–.4). External head size has a correlation of ~.2 with g. MRI research on brain regions indicates that the volumes of frontal, parietal and temporal cortices, and the hippocampus are also correlated with g, generally at .25 or more, while the correlations, averaged over many studies, with overall grey matter and overall white matter have been found to be .31 and .27, respectively. Some but not all studies have also found positive correlations between g and cortical thickness. However, the underlying reasons for these associations between the quantity of brain tissue and differences in cognitive abilities remain largely unknown.[2]

Most researchers believe that intelligence cannot be localized to a single brain region, such as the frontal lobe. Brain lesion studies have found small but consistent associations indicating that people with more white matter lesions tend to have lower cognitive ability. Research utilizing NMR spectroscopy has discovered somewhat inconsistent but generally positive correlations between intelligence and white matter integrity, supporting the notion that white matter is important for intelligence.[2]

Some research suggests that aside from the integrity of white matter, also its organizational efficiency is related to intelligence. The hypothesis that brain efficiency has a role in intelligence is supported by functional MRI research showing that more intelligent people generally process information more efficiently, i.e., they use fewer brain resources for the same task than less intelligent people.[2]

Small but relatively consistent associations with intelligence test scores include also brain activity, as measured by EEG records or event-related potentials, and nerve conduction velocity.[117][118]

g in non-humans edit

Evidence of a general factor of intelligence has also been observed in non-human animals. Studies have shown that g is responsible for 47% of the variance at the species level in primates[119] and around 55% of the individual variance observed in mice.[120][121] A review and meta-analysis of general intelligence, however, found that the average correlation among cognitive abilities was 0.18 and suggested that overall support for g is weak in non-human animals.[122]

While not able to be assessed using the same intelligence measures used in humans, cognitive ability can be measured with a variety of interactive and observational tools focusing on innovation, habit reversal, social learning, and responses to novelty. Non-human models of g such as mice are used to study genetic influences on intelligence and neurological developmental research into the mechanisms behind and biological correlates of g.[123]

g (or c) in human groups edit

Similar to g for individuals, a new research path aims to extract a general collective intelligence factor c for groups displaying a group's general ability to perform a wide range of tasks.[124] Definition, operationalization and statistical approach for this c factor are derived from and similar to g. Causes, predictive validity as well as additional parallels to g are investigated.[125]

Other biological associations edit

Height is correlated with intelligence (r~.2), but this correlation has not generally been found within families (i.e., among siblings), suggesting that it results from cross-assortative mating for height and intelligence, or from another factor that correlates with both (e.g. nutrition). Myopia is known to be associated with intelligence, with a correlation of around .2 to .25, and this association has been found within families, too.[126]

Group similarities and differences edit

Cross-cultural studies indicate that the g factor can be observed whenever a battery of diverse, complex cognitive tests is administered to a human sample. The factor structure of IQ tests has also been found to be consistent across sexes and ethnic groups in the U.S. and elsewhere.[118] The g factor has been found to be the most invariant of all factors in cross-cultural comparisons. For example, when the g factors computed from an American standardization sample of Wechsler's IQ battery and from large samples who completed the Japanese translation of the same battery were compared, the congruence coefficient was .99, indicating virtual identity. Similarly, the congruence coefficient between the g factors obtained from white and black standardization samples of the WISC battery in the U.S. was .995, and the variance in test scores accounted for by g was highly similar for both groups.[127]

Most studies suggest that there are negligible differences in the mean level of g between the sexes, but that sex differences in cognitive abilities are to be found in more narrow domains. For example, males generally outperform females in spatial tasks, while females generally outperform males in verbal tasks.[128] Another difference that has been found in many studies is that males show more variability in both general and specific abilities than females, with proportionately more males at both the low end and the high end of the test score distribution.[129]

Differences in g between racial and ethnic groups have been found, particularly in the U.S. between black- and white-identifying test takers, though these differences appear to have diminished significantly over time,[114] and to be attributable to environmental (rather than genetic) causes.[114][130] Some researchers have suggested that the magnitude of the black-white gap in cognitive test results is dependent on the magnitude of the test's g loading, with tests showing higher g loading producing larger gaps (see Spearman's hypothesis),[131] while others have criticized this view as methodologically unfounded.[132][133] Still others have noted that despite the increasing g loading of IQ test batteries over time, the performance gap between racial groups continues to diminish.[114] Comparative analysis has shown that while a gap of approximately 1.1 standard deviation in mean IQ (around 16 points) between white and black Americans existed in the late 1960s, between 1972 and 2002 black Americans gained between 4 and 7 IQ points relative to non-Hispanic Whites, and that "the g gap between Blacks and Whites declined virtually in tandem with the IQ gap."[114] In contrast, Americans of East Asian descent generally slightly outscore white Americans.[134] It has been claimed that racial and ethnic differences similar to those found in the U.S. can be observed globally,[135] but the significance, methodological grounding, and truth of such claims have all been disputed.[136][137][138][139][140][141]

Relation to other psychological constructs edit

Elementary cognitive tasks edit

 
An illustration of the Jensen box, an apparatus for measuring choice reaction time.

Elementary cognitive tasks (ECTs) also correlate strongly with g. ECTs are, as the name suggests, simple tasks that apparently require very little intelligence, but still correlate strongly with more exhaustive intelligence tests. Determining whether a light is red or blue and determining whether there are four or five squares drawn on a computer screen are two examples of ECTs. The answers to such questions are usually provided by quickly pressing buttons. Often, in addition to buttons for the two options provided, a third button is held down from the start of the test. When the stimulus is given to the subject, they remove their hand from the starting button to the button of the correct answer. This allows the examiner to determine how much time was spent thinking about the answer to the question (reaction time, usually measured in small fractions of second), and how much time was spent on physical hand movement to the correct button (movement time). Reaction time correlates strongly with g, while movement time correlates less strongly.[142] ECT testing has allowed quantitative examination of hypotheses concerning test bias, subject motivation, and group differences. By virtue of their simplicity, ECTs provide a link between classical IQ testing and biological inquiries such as fMRI studies.

Working memory edit

One theory holds that g is identical or nearly identical to working memory capacity. Among other evidence for this view, some studies have found factors representing g and working memory to be perfectly correlated. However, in a meta-analysis the correlation was found to be considerably lower.[143] One criticism that has been made of studies that identify g with working memory is that "we do not advance understanding by showing that one mysterious concept is linked to another."[144]

Piagetian tasks edit

Psychometric theories of intelligence aim at quantifying intellectual growth and identifying ability differences between individuals and groups. In contrast, Jean Piaget's theory of cognitive development seeks to understand qualitative changes in children's intellectual development. Piaget designed a number of tasks to verify hypotheses arising from his theory. The tasks were not intended to measure individual differences, and they have no equivalent in psychometric intelligence tests.[145][146] For example, in one of the best-known Piagetian conservation tasks a child is asked if the amount of water in two identical glasses is the same. After the child agrees that the amount is the same, the investigator pours the water from one of the glasses into a glass of different shape so that the amount appears different although it remains the same. The child is then asked if the amount of water in the two glasses is the same or different.

Notwithstanding the different research traditions in which psychometric tests and Piagetian tasks were developed, the correlations between the two types of measures have been found to be consistently positive and generally moderate in magnitude. A common general factor underlies them. It has been shown that it is possible to construct a battery consisting of Piagetian tasks that is as good a measure of g as standard IQ tests.[145][147]

Personality edit

The traditional view in psychology is that there is no meaningful relationship between personality and intelligence, and that the two should be studied separately. Intelligence can be understood in terms of what an individual can do, or what his or her maximal performance is, while personality can be thought of in terms of what an individual will typically do, or what his or her general tendencies of behavior are. Research has indicated that correlations between measures of intelligence and personality are small, and it has thus been argued that g is a purely cognitive variable that is independent of personality traits. In a 2007 meta-analysis the correlations between g and the "Big Five" personality traits were found to be as follows:

  • conscientiousness −.04
  • agreeableness .00
  • extraversion .02
  • openness .22
  • emotional stability .09

The same meta-analysis found a correlation of .20 between self-efficacy and g.[148][149][150]

Some researchers have argued that the associations between intelligence and personality, albeit modest, are consistent. They have interpreted correlations between intelligence and personality measures in two main ways. The first perspective is that personality traits influence performance on intelligence tests. For example, a person may fail to perform at a maximal level on an IQ test due to his or her anxiety and stress-proneness. The second perspective considers intelligence and personality to be conceptually related, with personality traits determining how people apply and invest their cognitive abilities, leading to knowledge expansion and greater cognitive differentiation.[148][151]

Creativity edit

Some researchers believe that there is a threshold level of g below which socially significant creativity is rare, but that otherwise there is no relationship between the two. It has been suggested that this threshold is at least one standard deviation above the population mean. Above the threshold, personality differences are believed to be important determinants of individual variation in creativity.[152][153]

Others have challenged the threshold theory. While not disputing that opportunity and personal attributes other than intelligence, such as energy and commitment, are important for creativity, they argue that g is positively associated with creativity even at the high end of the ability distribution. The longitudinal Study of Mathematically Precocious Youth has provided evidence for this contention. It has showed that individuals identified by standardized tests as intellectually gifted in early adolescence accomplish creative achievements (for example, securing patents or publishing literary or scientific works) at several times the rate of the general population, and that even within the top 1 percent of cognitive ability, those with higher ability are more likely to make outstanding achievements. The study has also suggested that the level of g acts as a predictor of the level of achievement, while specific cognitive ability patterns predict the realm of achievement.[154][155]

Criticism edit

Relation with Eugenics and Racialism edit

Research on the G-factor, as well as other psychometric values, has been widely criticized for not properly taking into account the eugencist background of its research practices.[156] The reductionism of the G-factor has been attributted to having evolved from "pseudoscientific theories" about race and intelligence.[157] Spearman's g and the concept of inherited, immutable intelligence were a boon for eugenicists and pseudoscientists alike.[158]

Joseph Graves Jr. and Amanda Johnson have argued that g "...is to the psychometricians what Huygens' ether was to early physicists: a nonentity taken as an article of faith instead of one in need of verification by real data."[159]

Some especially harsh critics have called the g factor, and psychometrics, as a form of pseudoscience.[160]

Gf-Gc theory edit

Raymond Cattell, a student of Charles Spearman's, modified the unitary g factor model and divided g into two broad, relatively independent domains: fluid intelligence (Gf) and crystallized intelligence (Gc). Gf is conceptualized as a capacity to figure out novel problems, and it is best assessed with tests with little cultural or scholastic content, such as Raven's matrices. Gc can be thought of as consolidated knowledge, reflecting the skills and information that an individual acquires and retains throughout his or her life. Gc is dependent on education and other forms of acculturation, and it is best assessed with tests that emphasize scholastic and cultural knowledge.[2][44][161] Gf can be thought to primarily consist of current reasoning and problem solving capabilities, while Gc reflects the outcome of previously executed cognitive processes.[162]

The rationale for the separation of Gf and Gc was to explain individuals' cognitive development over time. While Gf and Gc have been found to be highly correlated, they differ in the way they change over a lifetime. Gf tends to peak at around age 20, slowly declining thereafter. In contrast, Gc is stable or increases across adulthood. A single general factor has been criticized as obscuring this bifurcated pattern of development. Cattell argued that Gf reflected individual differences in the efficiency of the central nervous system. Gc was, in Cattell's thinking, the result of a person "investing" his or her Gf in learning experiences throughout life.[2][30][44][163]

Cattell, together with John Horn, later expanded the Gf-Gc model to include a number of other broad abilities, such as Gq (quantitative reasoning) and Gv (visual-spatial reasoning). While all the broad ability factors in the extended Gf-Gc model are positively correlated and thus would enable the extraction of a higher order g factor, Cattell and Horn maintained that it would be erroneous to posit that a general factor underlies these broad abilities. They argued that g factors computed from different test batteries are not invariant and would give different values of g, and that the correlations among tests arise because it is difficult to test just one ability at a time.[2][48][164]

However, several researchers have suggested that the Gf-Gc model is compatible with a g-centered understanding of cognitive abilities. For example, John B. Carroll's three-stratum model of intelligence includes both Gf and Gc together with a higher-order g factor. Based on factor analyses of many data sets, some researchers have also argued that Gf and g are one and the same factor and that g factors from different test batteries are substantially invariant provided that the batteries are large and diverse.[44][165][166]

Theories of uncorrelated abilities edit

Several theorists have proposed that there are intellectual abilities that are uncorrelated with each other. Among the earliest was L.L. Thurstone who created a model of primary mental abilities representing supposedly independent domains of intelligence. However, Thurstone's tests of these abilities were found to produce a strong general factor. He argued that the lack of independence among his tests reflected the difficulty of constructing "factorially pure" tests that measured just one ability. Similarly, J.P. Guilford proposed a model of intelligence that comprised up to 180 distinct, uncorrelated abilities, and claimed to be able to test all of them. Later analyses have shown that the factorial procedures Guilford presented as evidence for his theory did not provide support for it, and that the test data that he claimed provided evidence against g did in fact exhibit the usual pattern of intercorrelations after correction for statistical artifacts.[167][168]

More recently, Howard Gardner has developed the theory of multiple intelligences. He posits the existence of nine different and independent domains of intelligence, such as mathematical, linguistic, spatial, musical, bodily-kinesthetic, meta-cognitive, and existential intelligences, and contends that individuals who fail in some of them may excel in others. According to Gardner, tests and schools traditionally emphasize only linguistic and logical abilities while neglecting other forms of intelligence. While popular among educationalists, Gardner's theory has been much criticized by psychologists and psychometricians. One criticism is that the theory does violence to both scientific and everyday usages of the word "intelligence." Several researchers have argued that not all of Gardner's intelligences fall within the cognitive sphere. For example, Gardner contends that a successful career in professional sports or popular music reflects bodily-kinesthetic intelligence and musical intelligence, respectively, even though one might usually talk of athletic and musical skills, talents, or abilities instead. Another criticism of Gardner's theory is that many of his purportedly independent domains of intelligence are in fact correlated with each other. Responding to empirical analyses showing correlations between the domains, Gardner has argued that the correlations exist because of the common format of tests and because all tests require linguistic and logical skills. His critics have in turn pointed out that not all IQ tests are administered in the paper-and-pencil format, that aside from linguistic and logical abilities, IQ test batteries contain also measures of, for example, spatial abilities, and that elementary cognitive tasks (for example, inspection time and reaction time) that do not involve linguistic or logical reasoning correlate with conventional IQ batteries, too.[73][169][170][171]

Robert Sternberg, working with various colleagues, has also suggested that intelligence has dimensions independent of g. He argues that there are three classes of intelligence: analytic, practical, and creative. According to Sternberg, traditional psychometric tests measure only analytic intelligence, and should be augmented to test creative and practical intelligence as well. He has devised several tests to this effect. Sternberg equates analytic intelligence with academic intelligence, and contrasts it with practical intelligence, defined as an ability to deal with ill-defined real-life problems. Tacit intelligence is an important component of practical intelligence, consisting of knowledge that is not explicitly taught but is required in many real-life situations. Assessing creativity independent of intelligence tests has traditionally proved difficult, but Sternberg and colleagues have claimed to have created valid tests of creativity, too. The validation of Sternberg's theory requires that the three abilities tested are substantially uncorrelated and have independent predictive validity. Sternberg has conducted many experiments which he claims confirm the validity of his theory, but several researchers have disputed this conclusion. For example, in his reanalysis of a validation study of Sternberg's STAT test, Nathan Brody showed that the predictive validity of the STAT, a test of three allegedly independent abilities, was almost solely due to a single general factor underlying the tests, which Brody equated with the g factor.[172][173]

Flynn's model edit

James Flynn has argued that intelligence should be conceptualized at three different levels: brain physiology, cognitive differences between individuals, and social trends in intelligence over time. According to this model, the g factor is a useful concept with respect to individual differences but its explanatory power is limited when the focus of investigation is either brain physiology, or, especially, the effect of social trends on intelligence. Flynn has criticized the notion that cognitive gains over time, or the Flynn effect, are "hollow" if they cannot be shown to be increases in g. He argues that the Flynn effect reflects shifting social priorities and individuals' adaptation to them. To apply the individual differences concept of g to the Flynn effect is to confuse different levels of analysis. On the other hand, according to Flynn, it is also fallacious to deny, by referring to trends in intelligence over time, that some individuals have "better brains and minds" to cope with the cognitive demands of their particular time. At the level of brain physiology, Flynn has emphasized both that localized neural clusters can be affected differently by cognitive exercise, and that there are important factors that affect all neural clusters.[174]

The Mismeasure of Man edit

Paleontologist and biologist Stephen Jay Gould presented a critique in his 1981 book The Mismeasure of Man. He argued that psychometricians fallaciously reified the g factor into an ineluctable "thing" that provided a convenient explanation for human intelligence, grounded only in mathematical theory rather than the rigorous application of mathematical theory to biological knowledge.[175] An example is provided in the work of Cyril Burt, published posthumously in 1972: "The two main conclusions we have reached seem clear and beyond all question. The hypothesis of a general factor entering into every type of cognitive process, tentatively suggested by speculations derived from neurology and biology, is fully borne out by the statistical evidence; and the contention that differences in this general factor depend largely on the individual's genetic constitution appears incontestable.The concept of an innate, general cognitive ability, which follows from these two assumptions, though admittedly sheerly an abstraction, is thus wholly consistent with the empirical facts."[176]

Critique of Gould edit

Several researchers have criticized Gould's arguments. For example, they have rejected the accusation of reification, maintaining that the use of extracted factors such as g as potential causal variables whose reality can be supported or rejected by further investigations constitutes a normal scientific practice that in no way distinguishes psychometrics from other sciences. Critics have also suggested that Gould did not understand the purpose of factor analysis, and that he was ignorant of relevant methodological advances in the field. While different factor solutions may be mathematically equivalent in their ability to account for intercorrelations among tests, solutions that yield a g factor are psychologically preferable for several reasons extrinsic to factor analysis, including the phenomenon of the positive manifold, the fact that the same g can emerge from quite different test batteries, the widespread practical validity of g, and the linkage of g to many biological variables.[37][38][177][page needed]

Other critiques of g edit

John Horn and John McArdle have argued that the modern g theory, as espoused by, for example, Arthur Jensen, is unfalsifiable, because the existence of a common factor like g follows tautologically from positive correlations among tests. They contrasted the modern hierarchical theory of g with Spearman's original two-factor theory which was readily falsifiable (and indeed was falsified).[30]

See also edit

References edit

  1. ^ a b Kamphaus et al. 2005
  2. ^ a b c d e f g h Deary et al. 2010
  3. ^ Schlinger, Henry D. (2003). "The myth of intelligence". The Psychological Record. 53 (1): 15–32.
  4. ^ THOMSON, GODFREY H. (September 1916). "A Hierarchy Without a General Factor1". British Journal of Psychology. 8 (3): 271–281. doi:10.1111/j.2044-8295.1916.tb00133.x. ISSN 0950-5652.
  5. ^ Jensen 1998, 545
  6. ^ a b Warne, Russell T.; Burningham, Cassidy (2019). "Spearman's g found in 31 non-Western nations: Strong evidence that g is a universal phenomenon". Psychological Bulletin. 145 (3): 237–272. doi:10.1037/bul0000184. PMID 30640496. S2CID 58625266.
  7. ^ Adapted from Jensen 1998, 24. The correlation matrix was originally published in Spearman 1904, and it is based on the school performance of a sample of English children. While this analysis is historically important and has been highly influential, it does not meet modern technical standards. See Mackintosh 2011, 44ff. and Horn & McArdle 2007 for discussion of Spearman's methods.
  8. ^ Adapted from Chabris 2007, Table 19.1.
  9. ^ Gottfredson 1998
  10. ^ Deary, I. J. (2001). Intelligence. A Very Short Introduction. Oxford University Press. p. 12. ISBN 9780192893215.
  11. ^ Spearman 1904
  12. ^ Deary 2000, 6
  13. ^ a b c d Jensen 1992
  14. ^ Jensen 1998, 28
  15. ^ a b c d van deer Maas et al. 2006
  16. ^ Jensen 1998, 26, 36–39
  17. ^ Jensen 1998, 26, 36–39, 89–90
  18. ^ a b Jensen 2002
  19. ^ a b Floyd et al. 2009
  20. ^ a b Jensen 1980, 213
  21. ^ Jensen 1998, 94
  22. ^ a b Hunt 2011, 94
  23. ^ Jensen 1998, 18–19, 35–36, 38. The idea of a general, unitary mental ability was introduced to psychology by Herbert Spencer and Francis Galton in the latter half of the 19th century, but their work was largely speculative, with little empirical basis.
  24. ^ Jensen 1998, 91–92, 95
  25. ^ Jensen 2000
  26. ^ Mackintosh 2011, 157
  27. ^ Jensen 1998, 117
  28. ^ Bartholomew et al. 2009
  29. ^ Jensen 1998, 120
  30. ^ a b c Horn & McArdle 2007
  31. ^ Jensen 1998, 120–121
  32. ^ Mackintosh 2011, 157–158
  33. ^ a b Rushton & Jensen 2010
  34. ^ Mackintosh 2011, 44–45
  35. ^ McFarland, Dennis J. (2012). "A single g factor is not necessary to simulate positive correlations between cognitive tests". Journal of Clinical and Experimental Neuropsychology. 34 (4): 378–384. doi:10.1080/13803395.2011.645018. ISSN 1744-411X. PMID 22260190. S2CID 4694545. The fact that diverse cognitive tests tend to be positively correlated has been taken as evidence for a single general ability or "g" factor...the presence of a positive manifold in the correlations between diverse cognitive tests does not provide differential support for either single factor or multiple factor models of general abilities.
  36. ^ Jensen 1998, 18, 31–32
  37. ^ a b c Carroll 1995
  38. ^ a b Jensen 1982
  39. ^ Jensen 1998, 73
  40. ^ a b c d Deary 2012
  41. ^ Mackintosh 2011, 57
  42. ^ Jensen 1998, 46
  43. ^ Carroll 1997. The total common factor variance consists of the variance due to the g factor and the group factors considered together. The variance not accounted for by the common factors, referred to as uniqueness, comprises subtest-specific variance and measurement error.
  44. ^ a b c d Davidson & Kemp 2011
  45. ^ Mackintosh 2011, 151
  46. ^ Jensen 1998, 31
  47. ^ Mackintosh 2011, 151–153
  48. ^ a b McGrew 2005
  49. ^ Kvist & Gustafsson 2008
  50. ^ Johnson et al. 2004
  51. ^ Johnson et al. 2008
  52. ^ Mackintosh 2011, 150–153. See also Keith et al. 2001 where the g factors from the CAS and WJ III test batteries were found to be statistically indistinguishable, and Stauffer et al. 1996 where similar results were found for the ASVAB battery and a battery of cognitive-components-based tests.
  53. ^ "G factor: Issue of design and interpretation".
  54. ^ Kaufman, Scott Barry; Reynolds, Matthew R.; Liu, Xin; Kaufman, Alan S.; McGrew, Kevin S. (2012). "Are cognitive g and academic achievement g one and the same g? An exploration on the Woodcock–Johnson and Kaufman tests". Intelligence. 40 (2): 123–138. doi:10.1016/j.intell.2012.01.009.
  55. ^ Jensen 1998, 88, 101–103
  56. ^ Spearman, C. (1927). The abilities of man. New York: MacMillan.
  57. ^ Detterman, D.K.; Daniel, M.H. (1989). "Correlations of mental tests with each other and with cognitive variables are highest for low IQ groups". Intelligence. 13 (4): 349–359. doi:10.1016/s0160-2896(89)80007-8.
  58. ^ Deary & Pagliari 1991
  59. ^ a b Deary et al. 1996
  60. ^ a b Tucker-Drob 2009
  61. ^ Blum, D.; Holling, H. (2017). "Spearman's Law of Diminishing Returns. A meta-analysis". Intelligence. 65: 60–66. doi:10.1016/j.intell.2017.07.004.
  62. ^ Kell, Harrison J.; Lang, Jonas W. B. (September 2018). "The Great Debate: General Ability and Specific Abilities in the Prediction of Important Outcomes". Journal of Intelligence. 6 (3): 39. doi:10.3390/jintelligence6030039. PMC 6480721. PMID 31162466.
  63. ^ Neubauer, Aljoscha C.; Opriessnig, Sylvia (January 2014). "The Development of Talent and Excellence - Do Not Dismiss Psychometric Intelligence, the (Potentially) Most Powerful Predictor". Talent Development & Excellence. 6 (2): 1–15.
  64. ^ a b c Jensen 1998, 270
  65. ^ Gottfredson 2002
  66. ^ Coyle, Thomas R. (September 2018). "Non-g Factors Predict Educational and Occupational Criteria: More than g". Journal of Intelligence. 6 (3): 43. doi:10.3390/jintelligence6030043. PMC 6480787. PMID 31162470.
  67. ^ Ziegler, Matthias; Peikert, Aaron (September 2018). "How Specific Abilities Might Throw 'g' a Curve: An Idea on How to Capitalize on the Predictive Validity of Specific Cognitive Abilities". Journal of Intelligence. 6 (3): 41. doi:10.3390/jintelligence6030041. PMC 6480727. PMID 31162468.
  68. ^ Kell, Harrison J.; Lang, Jonas W. B. (April 2017). "Specific Abilities in the Workplace: More Important Than g?". Journal of Intelligence. 5 (2): 13. doi:10.3390/jintelligence5020013. PMC 6526462. PMID 31162404.
  69. ^ a b Sackett et al. 2008
  70. ^ Jensen 1998, 272, 301
  71. ^ Jensen 1998, 279–280
  72. ^ Jensen 1998, 279
  73. ^ a b Brody 2006
  74. ^ Frey & Detterman 2004
  75. ^ a b Schmidt & Hunter 2004
  76. ^ Jensen 1998, 292–293
  77. ^ Schmidt & Hunter 2004. These validity coefficients have been corrected for measurement error in the dependent variable (i.e., job or training performance) and for range restriction but not for measurement error in the independent variable (i.e., measures of g).
  78. ^ O'Boyle Jr., E. H.; Humphrey, R. H.; Pollack, J. M.; Hawver, T. H.; Story, P. A. (2011). "The relation between emotional intelligence and job performance: A meta-analysis". Journal of Organizational Behavior. 32 (5): 788–818. doi:10.1002/job.714. S2CID 6010387.
  79. ^ Côté, Stéphane; Miners, Christopher (2006). "Emotional Intelligence, Cognitive Intelligence and Job Performance". Administrative Science Quarterly. 51: 1–28. doi:10.2189/asqu.51.1.1. S2CID 142971341.
  80. ^ Ghiselli, E. E. (1973). "The validity of aptitude tests in personnel selection". Personnel Psychology. 26 (4): 461–477. doi:10.1111/j.1744-6570.1973.tb01150.x.
  81. ^ a b Vinchur, Andrew J.; Schippmann, Jeffery S.; S., Fred; Switzer, III; Roth, Philip L. (1998). "A meta-analytic review of predictors of job performance for salespeople". Journal of Applied Psychology. 83 (4): 586–597. doi:10.1037/0021-9010.83.4.586. S2CID 19093290.
  82. ^ Hunter, John E.; Hunter, Ronda F. (1984). "Validity and utility of alternative predictors of job performance". Psychological Bulletin. 96 (1): 72–98. doi:10.1037/0033-2909.96.1.72. S2CID 26858912.
  83. ^ Gottfredson, L. S. (1991). "The evaluation of alternative measures of job performance". Performance Assessment for the Workplace: 75–126.
  84. ^ Murphy, Kevin R.; Balzer, William K. (1986). "Systematic distortions in memory-based behavior ratings and performance evaluations: Consequences for rating accuracy". Journal of Applied Psychology. 71 (1): 39–44. doi:10.1037/0021-9010.71.1.39.
  85. ^ Hosoda, Megumi; Stone-Romero, Eugene F.; Coats, Gwen (1 June 2003). "The Effects of Physical Attractiveness on Job-Related Outcomes: A Meta-Analysis of Experimental Studies". Personnel Psychology. 56 (2): 431–462. doi:10.1111/j.1744-6570.2003.tb00157.x. ISSN 1744-6570.
  86. ^ Stauffer, Joseph M.; Buckley, M. Ronald (2005). "The Existence and Nature of Racial Bias in Supervisory Ratings". Journal of Applied Psychology. 90 (3): 586–591. doi:10.1037/0021-9010.90.3.586. PMID 15910152.
  87. ^ Schmidt, Frank L. (1 April 2002). "The Role of General Cognitive Ability and Job Performance: Why There Cannot Be a Debate". Human Performance. 15 (1–2): 187–210. doi:10.1080/08959285.2002.9668091. ISSN 0895-9285. S2CID 214650608.
  88. ^ Schmidt, Frank L.; Hunter, John E. (1998). "The validity and utility of selection methods in personnel psychology: Practical and theoretical implications of 85 years of research findings". Psychological Bulletin. 124 (2): 262–274. CiteSeerX 10.1.1.172.1733. doi:10.1037/0033-2909.124.2.262. S2CID 16429503.
  89. ^ Roth, Philip L.; Bevier, Craig A.; Bobko, Philip; Switzer, Fred S.; Tyler, Peggy (1 June 2001). "Ethnic Group Differences in Cognitive Ability in Employment and Educational Settings: A Meta-Analysis". Personnel Psychology. 54 (2): 297–330. CiteSeerX 10.1.1.372.6092. doi:10.1111/j.1744-6570.2001.tb00094.x. ISSN 1744-6570.
  90. ^ Viswesvaran, Chockalingam; Ones, Deniz S.; Schmidt, Frank L. (1996). "Comparative analysis of the reliability of job performance ratings". Journal of Applied Psychology. 81 (5): 557–574. doi:10.1037/0021-9010.81.5.557.
  91. ^ Hunter, J. E.; Schmidt, F. L.; Le, H (2006). "Implications of direct and indirect range restriction for meta-analysis methods and findings". Journal of Applied Psychology. 91 (3): 594–612. doi:10.1037/0021-9010.91.3.594. PMID 16737357. S2CID 14897081.
  92. ^ Jensen 1998, 568
  93. ^ Jensen 1998, 271
  94. ^ Gottfredson 2007
  95. ^ Kanazawa, Satoshi (2004). "General Intelligence as a Domain-Specific Adaptation". Psychological Review. American Psychological Association. 111 (2): 512–523. doi:10.1037/0033-295X.111.2.512. PMID 15065920.
  96. ^ Kanazawa, Satoshi (16 February 2010). "Why Liberals and Atheists Are More Intelligent". Social Psychology Quarterly. 73 (1): 33–57. CiteSeerX 10.1.1.395.4490. doi:10.1177/0190272510361602. ISSN 0190-2725. S2CID 2642312.
  97. ^ Kanazawa, Satoshi (May–June 2010). "Evolutionary Psychology and Intelligence Research" (PDF). American Psychologist. 65 (4): 279–289. doi:10.1037/a0019378. PMID 20455621. Retrieved 16 February 2018.
  98. ^ Borsboom, Denny; Dolan, Conor V. (2006). "Why g is not an adaptation: a comment on Kanazawa (2004)". Psychological Review. 113 (2): 433–437. doi:10.1037/0033-295X.113.2.433. PMID 16637768.
  99. ^ Cosmides, Leda; Tooby, John (1995) [1992]. "3. Cognitive Adaptations for Social Exchange". In Barkow, Jerome H.; Cosmides, Leda; Tooby, John (eds.). The Adapted Mind: Evolutionary Psychology and the Generation of Culture. New York: Oxford University Press. pp. 179–206. ISBN 978-0195101072.
  100. ^ Kaufman, Scott Barry; DeYoung, Colin G.; Reis, Deidre L.; Gray, Jeremy R. (May–June 2010). "General intelligence predicts reasoning ability even for evolutionarily familiar content" (PDF). Intelligence. 39 (5): 311–322. doi:10.1016/j.intell.2011.05.002. Retrieved 16 February 2018.
  101. ^ Kaufman, Scott Barry (2 July 2011). "Is General Intelligence Compatible with Evolutionary Psychology?". Psychology Today. Sussex Publishers. Retrieved 16 February 2018.
  102. ^ Plomin, Robert; Spinath, Frank M. (April 2002). "Genetics and general cognitive ability (g)". Trends in Cognitive Sciences. 6 (4): 169–176. doi:10.1016/s1364-6613(00)01853-2. ISSN 1364-6613. PMID 11912040. S2CID 17720084.
  103. ^ Deary et al. 2006
  104. ^ a b c Plomin & Spinath 2004
  105. ^ Haworth et al. 2010
  106. ^ Visscher, Peter M.; Hill, William G.; Wray, Naomi R. (April 2008). "Heritability in the genomics era — concepts and misconceptions". Nature Reviews Genetics. 9 (4): 255–266. doi:10.1038/nrg2322. ISSN 1471-0064. PMID 18319743. S2CID 690431.
  107. ^ Turkheimer, Eric; Haley, Andreana; Waldron, Mary; D'Onofrio, Brian; Gottesman, Irving I. (November 2003). "Socioeconomic Status Modifies Heritability of IQ in Young Children". Psychological Science. 14 (6): 623–628. doi:10.1046/j.0956-7976.2003.psci_1475.x. ISSN 0956-7976. PMID 14629696. S2CID 11265284.
  108. ^ Visscher, Peter M.; Hill, William G.; Wray, Naomi R. (2008). "Heritability in the genomics era — concepts and misconceptions". Nature Reviews Genetics. 9 (4): 255–266. doi:10.1038/nrg2322. ISSN 1471-0064. PMID 18319743. S2CID 690431.
  109. ^ Kovas & Plomin 2006
  110. ^ a b Penke et al. 2007
  111. ^ a b Chabris et al. 2012
  112. ^ Plomin 2003
  113. ^ Ashton, M. C., & Lee, K. (2005). Problems with the method of correlated vectors. Intelligence, 33(4), 431–444.
  114. ^ a b c d e Dickens, William T.; Flynn, James R. (2006). "Black Americans Reduce the Racial IQ Gap: Evidence from Standardization Samples" (PDF). Psychological Science. 17 (10): 913–920. doi:10.1111/j.1467-9280.2006.01802.x. PMID 17100793. S2CID 6593169.
  115. ^ Flynn, J. R. (2010). The spectacles through which I see the race and IQ debate. Intelligence, 38(4), 363–366.
  116. ^ Jensen 1998, 189–197
  117. ^ Mackintosh 2011, 134–138
  118. ^ a b Chabris 2007
  119. ^ Reader, S. M.; Hager, Y.; Laland, K. N. (2011). "The evolution of primate general and cultural intelligence". Philosophical Transactions of the Royal Society B: Biological Sciences. 366 (1567): 1017–1027. doi:10.1098/rstb.2010.0342. PMC 3049098. PMID 21357224.
  120. ^ Locurto, C., & Durkin, E. Problem-solving and individual differences in mice (Mus musculus) using water reinforcement. J Comp Psychol.
  121. ^ Locurto, C. & Scanlon, C. Individual differences and a spatial learning factor in two strains of mice (Mus musculus). J. Comp. Psychol. 112, 344–352 (1998).
  122. ^ Poirier, Marc-Antoine; Kozlovsky, Dovid Y.; Morand-Ferron, Julie; Careau, Vincent (9 December 2020). "How general is cognitive ability in non-human animals? A meta-analytical and multi-level reanalysis approach". Proceedings of the Royal Society B: Biological Sciences. 287 (1940): 20201853. doi:10.1098/rspb.2020.1853. PMC 7739923. PMID 33290683.
  123. ^ Anderson, B. (2000). The g factor in non-human animals. The nature of intelligence, (285), 79.
  124. ^ Woolley, Anita Williams; Chabris, Christopher F.; Pentland, Alex; Hashmi, Nada; Malone, Thomas W. (29 October 2010). "Evidence for a Collective Intelligence Factor in the Performance of Human Groups". Science. 330 (6004): 686–688. Bibcode:2010Sci...330..686W. doi:10.1126/science.1193147. ISSN 0036-8075. PMID 20929725. S2CID 74579.
  125. ^ Woolley, Anita Williams; Aggarwal, Ishani; Malone, Thomas W. (1 December 2015). "Collective Intelligence and Group Performance". Current Directions in Psychological Science. 24 (6): 420–424. doi:10.1177/0963721415599543. ISSN 0963-7214. S2CID 146673541.
  126. ^ Jensen 1998, 146, 149–150
  127. ^ Jensen 1998, 87–88
  128. ^ Hunt, Earl B. (2010). Human Intelligence. Cambridge University Press. pp. 378–379. ISBN 978-1139495110.
  129. ^ Mackintosh 2011, 360–373
  130. ^ Nisbett, Richard E.; Aronson, Joshua; Blair, Clancy; Dickens, William; Flynn, James; Halpern, Diane F.; Turkheimer, Eric (2012). "Group differences in IQ are best understood as environmental in origin" (PDF). American Psychologist. 67 (6): 503–504. doi:10.1037/a0029772. ISSN 0003-066X. PMID 22963427. Retrieved 22 July 2013.
  131. ^ Jensen 1998, 369–399
  132. ^ Schönemann, Peter (1997). "Famous artefacts: Spearman's hypothesis". Current Psychology of Cognition. 16 (6): 665–694.
  133. ^ Schönemann, Peter H. (1 May 1989). "Some new results on the Spearman hypothesis artifact". Bulletin of the Psychonomic Society. 27 (5): 462–464. doi:10.3758/BF03334656. ISSN 0090-5054.
  134. ^ Hunt 2011, 421
  135. ^ Lynn 2003
  136. ^ Tucker-Drob, Elliot M.; Bates, Timothy C. (February 2016). "Large Cross-National Differences in Gene x Socioeconomic Status Interaction on Intelligence". Psychological Science. 27 (2): 138–149. doi:10.1177/0956797615612727. ISSN 0956-7976. PMC 4749462. PMID 26671911.
  137. ^ Kamin, Leon J. (1 March 2006). "African IQ and Mental Retardation". South African Journal of Psychology. 36 (1): 1–9. doi:10.1177/008124630603600101. ISSN 0081-2463. S2CID 92984213.
  138. ^ Shuttleworth-Edwards, Ann B.; Van der Merwe, Adele S. (2002). "WAIS-III and WISC-IV South African Cross-Cultural Normative Data Stratified for Quality of Education". In Ferraro, F. Richard (ed.). Minority and cross-cultural aspects of neuropsychological assessment. Exton, PA: Swets & Zeitlinger. pp. 72–75. ISBN 9026518307.
  139. ^ Case for Non-Biased Intelligence Testing Against Black Africans Has Not Been Made: A Comment on Rushton, Skuy, and Bons (2004) 1*, Leah K. Hamilton1, Betty R. Onyura1 and Andrew S. Winston International Journal of Selection and Assessment Volume 14 Issue 3 Page 278 - September 2006
  140. ^ Steven P. Verney Assessment, Vol. 12, No. 3, 303-319 (2005)
  141. ^ The attack of the psychometricians 2007-06-08 at the Wayback Machine. DENNY BORSBOOM. PSYCHOMETRIKA VOL 71, NO 3, 425–440. SEPTEMBER 2006.
  142. ^ Jensen 1998, 213
  143. ^ Ackerman et al. 2005
  144. ^ Mackintosh 2011, 158
  145. ^ a b Weinberg 1989
  146. ^ Lautrey 2002
  147. ^ Humphreys et al. 1985
  148. ^ a b von Stumm et al. 2011
  149. ^ Jensen 1998, 573
  150. ^ Judge et al. 2007
  151. ^ von Stumm et al. 2009
  152. ^ Jensen 1998, 577
  153. ^ Eysenck 1995
  154. ^ Lubinski 2009
  155. ^ Robertson et al. 2010
  156. ^ Helms, Janet E. (June 2012). "A Legacy of Eugenics Underlies Racial-Group Comparisons in Intelligence Testing". Industrial and Organizational Psychology. 5 (2): 176–179. doi:10.1111/j.1754-9434.2012.01426.x. ISSN 1754-9426. S2CID 145700200.
  157. ^ Graves, Joseph L.; Johnson, Amanda (1995). "The Pseudoscience of Psychometry and the Bell Curve". The Journal of Negro Education. 64 (3): 277–294. doi:10.2307/2967209. JSTOR 2967209. Retrieved 23 October 2022.
  158. ^ Wintroub, Michael (2020). "Sordid genealogies: a conjectural history of Cambridge Analytica's eugenic roots". Humanities and Social Sciences Communications. 7 (1): 41. doi:10.1057/s41599-020-0505-5. ISSN 2662-9992. S2CID 220611772.
  159. ^ Graves, Joseph L.; Johnson, Amanda (1995). "The Pseudoscience of Psychometry and The Bell Curve". The Journal of Negro Education. 64 (3): 277–294. doi:10.2307/2967209. JSTOR 2967209.
  160. ^ Blum, Jeffrey M. (1978). Pseudoscience and Mental Ability: The Origins and Fallacies of the IQ Controversy. Monthly Review Press, 62 West 14th Street, New York, New York 10011 ($13.
  161. ^ Jensen 1998, 122–123
  162. ^ Sternberg et al. 1981
  163. ^ Jensen 1998, 123
  164. ^ Jensen 1998, 124
  165. ^ Jensen 1998, 125
  166. ^ Mackintosh 2011, 152–153
  167. ^ Jensen 1998, 77–78, 115–117
  168. ^ Mackintosh 2011, 52, 239
  169. ^ Jensen 1998, 128–132
  170. ^ Deary 2001, 15–16
  171. ^ Mackintosh 2011, 236–237
  172. ^ Hunt 2011, 120–130
  173. ^ Mackintosh 2011, 223–235
  174. ^ Flynn 2011
  175. ^ Gould, Stephen Jay (1981). The Mismeasure of Man. New York, NY: W.W. Norton & Company. p. 273. OCLC 470800842.
  176. ^ Burt, Cyril (1972). "Inheritance of general intelligence". American Psychologist. 27 (3): 188. doi:10.1037/h0033789. ISSN 1935-990X. PMID 5009980.
  177. ^ Korb 1994
Bundled references

Bibliography edit

  • Ackerman, P. L.; Beier, M. E.; Boyle, M. O. (2005). "Working memory and intelligence: The same or different constructs?". Psychological Bulletin. 131 (1): 30–60. doi:10.1037/0033-2909.131.1.30. PMID 15631550. S2CID 14087289.
  • Bartholomew, D.J.; Deary, I.J.; Lawn, M. (2009). "A New Lease of Life for Thomson's Bonds Model of Intelligence" (PDF). Psychological Review. 116 (3): 567–579. doi:10.1037/a0016262. PMID 19618987.
  • Brody, N. (2006). Geocentric theory: A valid alternative to Gardner's theory of intelligence. In Schaler J. A. (Ed.), Howard Gardner under fire: The rebel psychologist faces his critics. Chicago: Open Court.
  • Carroll, J.B. (1995). "Reflections on Stephen Jay Gould's The Mismeasure of Man (1981) A Retrospective Review". Intelligence. 21 (2): 121–134. doi:10.1016/0160-2896(95)90022-5.
  • Carroll, J.B. (1997). "Psychometrics, Intelligence, and Public Perception" (PDF). Intelligence. 24: 25–52. CiteSeerX 10.1.1.408.9146. doi:10.1016/s0160-2896(97)90012-x.
  • Chabris, C.F. (2007). Cognitive and Neurobiological Mechanisms of the Law of General Intelligence. In Roberts, M. J. (Ed.) Integrating the mind: Domain general versus domain specific processes in higher cognition. Hove, UK: Psychology Press.
  • Chabris, C.F.; Hebert, B.M.; Benjamin, D.J.; Beauchamp, J.P.; Cesarini, D.; van der Loos, M.J.H.M.; Johannesson, M.; Magnusson, P.K.E.; Lichtenstein, P.; Atwood, C.S.; Freese, J.; Hauser, T.S.; Hauser, R.M.; Christakis, N.A. & Laibson, D. (2012). (PDF). Psychological Science. 23 (11): 1314–1323. doi:10.1177/0956797611435528. PMC 3498585. PMID 23012269. Archived from the original (PDF) on 21 October 2012. Retrieved 28 September 2012.
  • Davidson, J.E. & Kemp, I.A. (2011). Contemporary models of intelligence. In R.J. Sternberg & S.B. Kaufman (Eds.), The Cambridge Handbook of Intelligence. New York, NY: Cambridge University Press.
  • Deary, I.J. (2012). "Intelligence" (PDF). Annual Review of Psychology. 63: 453–482. doi:10.1146/annurev-psych-120710-100353. PMID 21943169. (PDF) from the original on 25 February 2021. Retrieved 25 February 2021.
  • Deary, I.J. (2001). Intelligence. A Very Short Introduction. Oxford: Oxford University Press. doi:10.1093/actrade/9780192893215.001.0001
  • Deary I.J. (2000). Looking Down on Human Intelligence: From Psychometrics to the Brain. Oxford, England: Oxford University Press. doi:10.1093/acprof:oso/9780198524175.001.0001
  • Deary, I.J.; Pagliari, C. (1991). "The strength of g at different levels of ability: Have Detterman and Daniel rediscovered Spearman's "law of diminishing returns"?". Intelligence. 15 (2): 247–250. doi:10.1016/0160-2896(91)90033-A.
  • Deary, I.J.; Egan, V.; Gibson, G.J.; Brand, C.R.; Austin, E.; Kellaghan, T. (1996). "Intelligence and the differentiation hypothesis". Intelligence. 23 (2): 105–132. doi:10.1016/S0160-2896(96)90008-2.
  • Deary, I.J.; Spinath, F.M.; Bates, T.C. (2006). "Genetics of intelligence". Eur J Hum Genet. 14 (6): 690–700. doi:10.1038/sj.ejhg.5201588. PMID 16721405.
  • Deary, I.J.; Penke, L.; Johnson, W. (2010). "The neuroscience of human intelligence differences" (PDF). Nature Reviews Neuroscience. 11 (3): 201–211. doi:10.1038/nrn2793. hdl:20.500.11820/9b11fac3-47d0-424c-9d1c-fe6f9ff2ecac. PMID 20145623. S2CID 5136934.
  • Detterman, D.K.; Daniel, M.H. (1989). "Correlations of mental tests with each other and with cognitive variables are highest for low-IQ groups". Intelligence. 13 (4): 349–359. doi:10.1016/S0160-2896(89)80007-8.
  • Eysenck, H.J. (1995). Creativity as a product of intelligence and personality. In Saklofske, D.H. & Zeidner, M. (Eds.), International Handbook of Personality and Intelligence (pp. 231–247). New York, NY, US: Plenum Press.
  • Floyd, R. G.; Shands, E. I.; Rafael, F. A.; Bergeron, R.; McGrew, K. S. (2009). "The dependability of general-factor loadings: The effects of factor-extraction methods, test battery composition, test battery size, and their interactions" (PDF). Intelligence. 37 (5): 453–465. doi:10.1016/j.intell.2009.05.003.
  • Flynn, J. (2011). Secular changes in intelligence. Pages 647–665 in R.J. Sternberg & S.B. Kaufman (eds.), Cambridge Handbook of Intelligence. New York, NY: Cambridge University Press.
  • Frey, M. C.; Detterman, D. K. (2004). "Scholastic Assessment or g? The Relationship Between the Scholastic Assessment Test and General Cognitive Ability" (PDF). Psychological Science. 15 (6): 373–378. doi:10.1111/j.0956-7976.2004.00687.x. PMID 15147489. S2CID 12724085.
  • Gottfredson, L. S. (1998). "Winter). The general intelligence factor". Scientific American Presents. 9 (4): 24–29.
  • Gottfredson, L. S. (2002). g: Highly general and highly practical. Pages 331–380 in R. J. Sternberg & E. L. Grigorenko (Eds.), The general factor of intelligence: How general is it? Mahwah, NJ: Erlbaum.
  • Gottfredson, L.S. (2007). Innovation, fatal accidents, and the evolution of general intelligence. In M. J. Roberts (Ed.), Integrating the mind: Domain general versus domain specific processes in higher cognition (pp. 387–425). Hove, UK: Psychology Press.
  • Gottfredson, L.S. (2011). Intelligence and social inequality: Why the biological link? pp. 538–575 in T. Chamorro-Premuzic, A. Furhnam, & S. von Stumm (Eds.), Handbook of Individual Differences. Wiley-Blackwell.
  • Gould, S.J. (1996, Revised Edition). The Mismeasure of Man. New York: W. W. Norton & Company.
  • Haworth, C.M.A.; et al. (2010). "The heritability of general cognitive ability increases linearly from childhood to young adulthood". Mol Psychiatry. 15 (11): 1112–1120. doi:10.1038/mp.2009.55. PMC 2889158. PMID 19488046.
  • Horn, J. L. & McArdle, J.J. (2007). Understanding human intelligence since Spearman. In R. Cudeck & R. MacCallum, (Eds.). Factor Analysis at 100 years (pp. 205–247). Mahwah, NJ: Lawrence Erlbaum Associates, Inc.
  • Humphreys, L.G.; Rich, S.A.; Davey, T.C. (1985). "A Piagetian Test of General Intelligence". Developmental Psychology. 21 (5): 872–877. doi:10.1037/0012-1649.21.5.872.
  • Hunt, E.B. (2011). Human Intelligence. Cambridge, UK: Cambridge University Press.
  • Jensen, A.R. (1980). Bias in Mental Testing. New York: The Free Press.
  • Jensen, A.R. (1982). "The Debunking of Scientific Fossils and Straw Persons". Contemporary Education Review. 1: 121–135.
  • Jensen, A.R. (1992). "Understanding g in terms of information processing". Educational Psychology Review. 4 (3): 271–308. doi:10.1007/bf01417874. S2CID 54739564.
  • Jensen, A.R. (1998). The G Factor: The Science of Mental Ability. Human evolution, behavior, and intelligence. Praeger. ISBN 978-0-275-96103-9. Retrieved 10 July 2021.
  • Jensen, A.R. (2000). A Nihilistic Philosophy of Science for a Scientific Psychology? Psycoloquy, 11, Issue 088, Article 49.
  • Jensen, A.R. (2002). Psychometric g: Definition and substantiation. In R.J. Sternberg & E.L. Grigorenko (Eds.), General factor of intelligence: How general is it? (pp. 39–54). Mahwah, NJ: Erlbaum.
  • Johnson, W.; Bouchard, T.J.; Krueger, R.F.; McGue, M.; Gottesman, I.I. (2004). "Just one g: Consistent results from three test batteries". Intelligence. 32: 95–107. doi:10.1016/S0160-2896(03)00062-X.
  • Johnson, W.; te Nijenhuis, J.; Bouchard Jr, T. (2008). "Still just 1 g: Consistent results from five test batteries". Intelligence. 36: 81–95. doi:10.1016/j.intell.2007.06.001.
  • Judge, T. A.; Jackson, C. L.; Shaw, J. C.; Scott, B. A.; Rich, B. L. (2007). "Self-efficacy and work-related performance: The integral role of individual differences". Journal of Applied Psychology. 92 (1): 107–127. doi:10.1037/0021-9010.92.1.107. PMID 17227155. S2CID 333238.
  • Kamphaus, R.W., Winsor, A.P., Rowe, E.W., & Kim, S. (2005). A history of intelligence test interpretation. In D.P. Flanagan and P.L. Harrison (Eds.), Contemporary intellectual assessment: Theories, tests, and issues (2nd Ed.) (pp. 23–38). New York: Guilford.
  • Kane, M. J.; Hambrick, D. Z.; Conway, A. R. A. (2005). "Working memory capacity and fluid intelligence are strongly related constructs: Comment on Ackerman, Beier, and Boyle (2004)" (PDF). Psychological Bulletin. 131 (1): 66–71. doi:10.1037/0033-2909.131.1.66. PMID 15631552.
  • Keith, T.Z.; Kranzler, J.H.; Flanagan, D.P. (2001). "What does the Cognitive Assessment System (CAS) measure? Joint confirmatory factor analysis of the CAS and the Woodcock-Johnson Tests of Cognitive Ability (3rd Edition)". School Psychology Review. 30: 89–119. doi:10.1080/02796015.2001.12086102. S2CID 141437006.
  • Korb, K. B. (1994). "Stephen Jay Gould on intelligence". Cognition. 52 (2): 111–123. CiteSeerX 10.1.1.22.9513. doi:10.1016/0010-0277(94)90064-7. PMID 7924200. S2CID 10514854.
  • Kovas, Y.; Plomin, R. (2006). "Generalist genes: implications for the cognitive sciences". Trends in Cognitive Sciences. 10 (5): 198–203. doi:10.1016/j.tics.2006.03.001. PMID 16580870. S2CID 13943225.
  • Kvist, A. & Gustafsson, J.-E. (2008). The relation between fluid intelligence and the general factor as a function of cultural background: A test of Cattell's Investment theory. Intelligence 36, 422–436.
  • Lautrey, J. (2002). Is there a general factor of cognitive development? In Sternberg, R.J. & Grigorenko, E.L. (Eds.), The general factor of intelligence: How general is it? Mahwah, NJ: Erlbaum.
  • Lubinski, D (2009). "Exceptional Cognitive Ability: The Phenotype". Behavior Genetics. 39 (4): 350–358. doi:10.1007/s10519-009-9273-0. PMID 19424784. S2CID 7900602.
  • Lynn, R. (2003). The Geography of Intelligence. In Nyborg, H. (ed.), The Scientific Study of General Intelligence: Tribute to Arthur R. Jensen (pp. 126–146). Oxford: Pergamon.
  • Mackintosh, N.J. (2011). IQ and Human Intelligence. Oxford, UK: Oxford University Press.
  • McGrew, K.S. (2005). The Cattell-Horn-Carroll Theory of Cognitive Abilities: Past, Present, and Future. Contemporary Intellectual Assessment: Theories, Tests, and Issues. (pp. 136–181) New York, NY, US: Guilford Press Flanagan, Dawn P. (Ed); Harrison, Patti L. (Ed), (2005). xvii, 667 pp.
  • Neisser, U.; Boodoo, G.; Bouchard Jr, T.J.; Boykin, A.W.; Brody, N.; Ceci, S.J.; Halpern, D.F.; Loehlin, J.C.; Perloff, R. (1996). "Intelligence: Knowns and Unknowns". American Psychologist. 51 (2): 77–101. CiteSeerX 10.1.1.322.5525. doi:10.1037/0003-066x.51.2.77.
  • Oberauer, K.; Schulze, R.; Wilhelm, O.; Süß, H.-M. (2005). "Working memory and intelligence – their correlation and their relation: A comment on Ackerman, Beier, and Boyle (2005)". Psychological Bulletin. 131 (1): 61–65. doi:10.1037/0033-2909.131.1.61. PMID 15631551. S2CID 2508020.
  • Penke, L.; Denissen, J.J.A.; Miller, G.F. (2007). "The Evolutionary Genetics of Personality" (PDF). European Journal of Personality. 21 (5): 549–587. doi:10.1002/per.629. S2CID 13403823.
  • Plomin, R (2003). "Genetics, genes, genomics and g." Molecular Psychiatry. 8 (1): 1–5. doi:10.1038/sj.mp.4001249. PMID 12556898.
  • Plomin, R.; Spinath, F.M. (2004). "Intelligence: genetics, genes, and genomics". J Pers Soc Psychol. 86 (1): 112–129. doi:10.1037/0022-3514.86.1.112. PMID 14717631. S2CID 5734393.
  • Robertson, K.F.; Smeets, S.; Lubinski, D.; Benbow, C.P. (2010). "Beyond the Threshold Hypothesis: Even Among the Gifted and Top Math/Science Graduate Students, Cognitive Abilities, Vocational Interests, and Lifestyle Preferences Matter for Career Choice, Performance, and Persistence". Current Directions in Psychological Science. 19 (6): 346–351. doi:10.1177/0963721410391442. S2CID 46218795.
  • Roth, P.L.; Bevier, C.A.; Bobko, P.; Switzer III, F.S.; Tyler, P. (2001). "Ethnic group differences in cognitive ability in employment and educational settings: A meta-analysis". Personnel Psychology. 54 (2): 297–330. CiteSeerX 10.1.1.372.6092. doi:10.1111/j.1744-6570.2001.tb00094.x.
  • Rushton, J.P.; Jensen, A.R. (2010). "The rise and fall of the Flynn Effect as a reason to expect a narrowing of the Black–White IQ gap". Intelligence. 38 (2): 213–219. doi:10.1016/j.intell.2009.12.002.
  • Sackett, P.R.; Borneman, M.J.; Connelly, B.S. (2008). "High-Stakes Testing in Higher Education and Employment. Appraising the Evidence for Validity and Fairness". American Psychologist. 63 (4): 215–227. CiteSeerX 10.1.1.189.2163. doi:10.1037/0003-066x.63.4.215. PMID 18473607.
  • Schmidt, F.L.; Hunter, J. (2004). "General Mental Ability in the World of Work: Occupational Attainment and Job Performance" (PDF). Journal of Personality and Social Psychology. 86 (1): 162–173. CiteSeerX 10.1.1.394.8878. doi:10.1037/0022-3514.86.1.162. PMID 14717634.
  • Spearman, C.E. (1904). (PDF). American Journal of Psychology. 15 (2): 201–293. doi:10.2307/1412107. JSTOR 1412107. Archived from the original (PDF) on 7 April 2014.
  • Spearman, C.E. (1927). The Abilities of Man. London: Macmillan.
  • Stauffer, J.; Ree, M.J.; Carretta, T.R. (1996). "Cognitive-Components Tests Are Not Much More than g: An Extension of Kyllonen's Analyses". The Journal of General Psychology. 123 (3): 193–205. doi:10.1080/00221309.1996.9921272.
  • Sternberg, R. J.; Conway, B. E.; Ketron, J. L.; Bernstein, M. (1981). "People's conception of intelligence". Journal of Personality and Social Psychology. 41: 37–55. doi:10.1037/0022-3514.41.1.37.
  • von Stumm, S.; Chamorro-Premuzic, T.; Quiroga, M.Á.; Colom, R. (2009). "Separating narrow and general variances in intelligence-personality associations". Personality and Individual Differences. 47 (4): 336–341. doi:10.1016/j.paid.2009.03.024.
  • von Stumm, S., Chamorro-Premuzic, T., Ackerman, P. L. (2011). Re-visiting intelligence-personality associations: Vindicating intellectual investment. In T. Chamorro-Premuzic, S. von Stumm, & A. Furnham (eds.), Handbook of Individual Differences. Chichester, UK: Wiley-Blackwell.
  • Tucker-Drob, E.M. (2009). "Differentiation of cognitive abilities across the life span". Developmental Psychology. 45 (4): 1097–1118. doi:10.1037/a0015864. PMC 2855504. PMID 19586182.
  • van der Maas, H. L. J.; Dolan, C. V.; Grasman, R. P. P. P.; Wicherts, J. M.; Huizenga, H. M.; Raaijmakers, M. E. J. (2006). (PDF). Psychological Review. 13 (4): 842–860. doi:10.1037/0033-295x.113.4.842. PMID 17014305. Archived from the original (PDF) on 17 April 2012. Retrieved 1 August 2012.
  • Weinberg, R.A. (1989). "Intelligence and IQ. Landmark Issues and Great Debates". American Psychologist. 44 (2): 98–104. doi:10.1037/0003-066X.44.2.98.

factor, psychometrics, general, intelligence, redirects, here, confused, with, intelligence, artificial, general, intelligence, intelligence, quotient, factor, also, known, general, intelligence, general, mental, ability, general, intelligence, factor, constru. General intelligence redirects here Not to be confused with Intelligence Artificial general intelligence or Intelligence quotient The g factor also known as general intelligence general mental ability or general intelligence factor is a construct developed in psychometric investigations of cognitive abilities and human intelligence It is a variable that summarizes positive correlations among different cognitive tasks reflecting the fact that an individual s performance on one type of cognitive task tends to be comparable to that person s performance on other kinds of cognitive tasks The g factor typically accounts for 40 to 50 percent of the between individual performance differences on a given cognitive test and composite scores IQ scores based on many tests are frequently regarded as estimates of individuals standing on the g factor 1 The terms IQ general intelligence general cognitive ability general mental ability and simply intelligence are often used interchangeably to refer to this common core shared by cognitive tests 2 However the g factor itself is a mathematical construct indicating the level of observed correlation between cognitive tasks 3 The measured value of this construct depends on the cognitive tasks that are used and little is known about the underlying causes of the observed correlations The existence of the g factor was originally proposed by the English psychologist Charles Spearman in the early years of the 20th century He observed that children s performance ratings across seemingly unrelated school subjects were positively correlated and reasoned that these correlations reflected the influence of an underlying general mental ability that entered into performance on all kinds of mental tests Spearman suggested that all mental performance could be conceptualized in terms of a single general ability factor which he labeled g and many narrow task specific ability factors Soon after Spearman proposed the existence of g it was challenged by Godfrey Thomson who presented evidence that such intercorrelations among test results could arise even if no g factor existed 4 Today s factor models of intelligence typically represent cognitive abilities as a three level hierarchy where there are many narrow factors at the bottom of the hierarchy a handful of broad more general factors at the intermediate level and at the apex a single factor referred to as the g factor which represents the variance common to all cognitive tasks Traditionally research on g has concentrated on psychometric investigations of test data with a special emphasis on factor analytic approaches However empirical research on the nature of g has also drawn upon experimental cognitive psychology and mental chronometry brain anatomy and physiology quantitative and molecular genetics and primate evolution 5 Scientists consider g to be a statistical regularity and uncontroversial and a general cognitive factor appears in data collected from people in nearly every human culture 6 Yet there is no consensus as to what causes the positive correlations between tests Research in the field of behavioral genetics has shown that the construct of g is highly heritable in measured populations It has a number of other biological correlates including brain size It is also a significant predictor of individual differences in many social outcomes particularly in education and employment However critics of g have contended that an emphasis on g is misplaced and entails a devaluation of other important abilities Stephen J Gould famously denounced the concept of g as supporting an unrealistic reified view of human intelligence Contents 1 Cognitive ability testing 2 Theories 2 1 Mental energy or efficiency 2 2 Sampling theory 2 3 Mutualism 3 Factor structure of cognitive abilities 4 Indifference of the indicator 5 Population distribution 6 Spearman s law of diminishing returns 7 Practical validity 7 1 Academic achievement 7 2 Job attainment 7 3 Job performance 7 4 Income 7 5 Other correlates 8 Genetic and environmental determinants 9 Neuroscientific findings 10 g in non humans 11 g or c in human groups 12 Other biological associations 13 Group similarities and differences 14 Relation to other psychological constructs 14 1 Elementary cognitive tasks 14 2 Working memory 14 3 Piagetian tasks 14 4 Personality 14 5 Creativity 15 Criticism 15 1 Relation with Eugenics and Racialism 15 2 Gf Gc theory 15 3 Theories of uncorrelated abilities 15 4 Flynn s model 15 5 The Mismeasure of Man 15 5 1 Critique of Gould 15 6 Other critiques of g 16 See also 17 References 18 BibliographyCognitive ability testing editSpearman s correlation matrix for six measures of school performance All the correlations are positive the positive manifold phenomenon The bottom row shows the g loadings of each performance measure 7 Classics French English Math Pitch MusicClassics French 83 English 78 67 Math 70 67 64 Pitch discrimination 66 65 54 45 Music 63 57 51 51 40 g 958 882 803 750 673 646 Subtest intercorrelations in a sample of Scottish subjects who completed the WAIS R battery The subtests are Vocabulary Similarities Information Comprehension Picture arrangement Block design Arithmetic Picture completion Digit span Object assembly and Digit symbol The bottom row shows the g loadings of each subtest 8 V S I C PA BD A PC DSp OA DSV S 67 I 72 59 C 70 58 59 PA 51 53 50 42 BD 45 46 45 39 43 A 48 43 55 45 41 44 PC 49 52 52 46 48 45 30 DSp 46 40 36 36 31 32 47 23 OA 32 40 32 29 36 58 33 41 14 DS 32 33 26 30 28 36 28 26 27 25 g 83 80 80 75 70 70 68 68 56 56 48 nbsp Correlations between mental testsCognitive ability tests are designed to measure different aspects of cognition Specific domains assessed by tests include mathematical skill verbal fluency spatial visualization and memory among others However individuals who excel at one type of test tend to excel at other kinds of tests too while those who do poorly on one test tend to do so on all tests regardless of the tests contents 9 The English psychologist Charles Spearman was the first to describe this phenomenon 10 In a famous research paper published in 1904 11 he observed that children s performance measures across seemingly unrelated school subjects were positively correlated This finding has since been replicated numerous times The consistent finding of universally positive correlation matrices of mental test results or the positive manifold despite large differences in tests contents has been described as arguably the most replicated result in all psychology 12 Zero or negative correlations between tests suggest the presence of sampling error or restriction of the range of ability in the sample studied 13 Using factor analysis or related statistical methods it is possible to identify a single common factor that can be regarded as a summary variable characterizing the correlations between all the different tests in a test battery Spearman referred to this common factor as the general factor or simply g By convention g is always printed as a lower case italic Mathematically the g factor is a source of variance among individuals which means that one cannot meaningfully speak of any one individual s mental abilities consisting of g or other factors to any specified degree One can only speak of an individual s standing on g or other factors compared to other individuals in a relevant population 13 14 15 Different tests in a test battery may correlate with or load onto the g factor of the battery to different degrees These correlations are known as g loadings An individual test taker s g factor score representing their relative standing on the g factor in the total group of individuals can be estimated using the g loadings Full scale IQ scores from a test battery will usually be highly correlated with g factor scores and they are often regarded as estimates of g For example the correlations between g factor scores and full scale IQ scores from David Wechsler s tests have been found to be greater than 95 1 13 16 The terms IQ general intelligence general cognitive ability general mental ability or simply intelligence are frequently used interchangeably to refer to the common core shared by cognitive tests 2 The g loadings of mental tests are always positive and usually range between 10 and 90 with a mean of about 60 and a standard deviation of about 15 Raven s Progressive Matrices is among the tests with the highest g loadings around 80 Tests of vocabulary and general information are also typically found to have high g loadings 17 18 However the g loading of the same test may vary somewhat depending on the composition of the test battery 19 The complexity of tests and the demands they place on mental manipulation are related to the tests g loadings For example in the forward digit span test the subject is asked to repeat a sequence of digits in the order of their presentation after hearing them once at a rate of one digit per second The backward digit span test is otherwise the same except that the subject is asked to repeat the digits in the reverse order to that in which they were presented The backward digit span test is more complex than the forward digit span test and it has a significantly higher g loading Similarly the g loadings of arithmetic computation spelling and word reading tests are lower than those of arithmetic problem solving text composition and reading comprehension tests respectively 13 20 Test difficulty and g loadings are distinct concepts that may or may not be empirically related in any specific situation Tests that have the same difficulty level as indexed by the proportion of test items that are failed by test takers may exhibit a wide range of g loadings For example tests of rote memory have been shown to have the same level of difficulty but considerably lower g loadings than many tests that involve reasoning 20 21 Theories editWhile the existence of g as a statistical regularity is well established and uncontroversial among experts there is no consensus as to what causes the positive intercorrelations Several explanations have been proposed 22 Mental energy or efficiency edit Charles Spearman reasoned that correlations between tests reflected the influence of a common causal factor a general mental ability that enters into performance on all kinds of mental tasks However he thought that the best indicators of g were those tests that reflected what he called the eduction of relations and correlates which included abilities such as deduction induction problem solving grasping relationships inferring rules and spotting differences and similarities Spearman hypothesized that g was equivalent with mental energy However this was more of a metaphorical explanation and he remained agnostic about the physical basis of this energy expecting that future research would uncover the exact physiological nature of g 23 Following Spearman Arthur Jensen maintained that all mental tasks tap into g to some degree According to Jensen the g factor represents a distillate of scores on different tests rather than a summation or an average of such scores with factor analysis acting as the distillation procedure 18 He argued that g cannot be described in terms of the item characteristics or information content of tests pointing out that very dissimilar mental tasks may have nearly equal g loadings Wechsler similarly contended that g is not an ability at all but rather some general property of the brain Jensen hypothesized that g corresponds to individual differences in the speed or efficiency of the neural processes associated with mental abilities 24 He also suggested that given the associations between g and elementary cognitive tasks it should be possible to construct a ratio scale test of g that uses time as the unit of measurement 25 Sampling theory edit The so called sampling theory of g originally developed by Edward Thorndike and Godfrey Thomson proposes that the existence of the positive manifold can be explained without reference to a unitary underlying capacity According to this theory there are a number of uncorrelated mental processes and all tests draw upon different samples of these processes The intercorrelations between tests are caused by an overlap between processes tapped by the tests 26 27 Thus the positive manifold arises due to a measurement problem an inability to measure more fine grained presumably uncorrelated mental processes 15 It has been shown that it is not possible to distinguish statistically between Spearman s model of g and the sampling model both are equally able to account for intercorrelations among tests 28 The sampling theory is also consistent with the observation that more complex mental tasks have higher g loadings because more complex tasks are expected to involve a larger sampling of neural elements and therefore have more of them in common with other tasks 29 Some researchers have argued that the sampling model invalidates g as a psychological concept because the model suggests that g factors derived from different test batteries simply reflect the shared elements of the particular tests contained in each battery rather than a g that is common to all tests Similarly high correlations between different batteries could be due to them measuring the same set of abilities rather than the same ability 30 Critics have argued that the sampling theory is incongruent with certain empirical findings Based on the sampling theory one might expect that related cognitive tests share many elements and thus be highly correlated However some closely related tests such as forward and backward digit span are only modestly correlated while some seemingly completely dissimilar tests such as vocabulary tests and Raven s matrices are consistently highly correlated Another problematic finding is that brain damage frequently leads to specific cognitive impairments rather than a general impairment one might expect based on the sampling theory 15 31 Mutualism edit The mutualism model of g proposes that cognitive processes are initially uncorrelated but that the positive manifold arises during individual development due to mutual beneficial relations between cognitive processes Thus there is no single process or capacity underlying the positive correlations between tests During the course of development the theory holds any one particularly efficient process will benefit other processes with the result that the processes will end up being correlated with one another Thus similarly high IQs in different persons may stem from quite different initial advantages that they had 15 32 Critics have argued that the observed correlations between the g loadings and the heritability coefficients of subtests are problematic for the mutualism theory 33 Factor structure of cognitive abilities edit nbsp An illustration of Spearman s two factor intelligence theory Each small oval is a hypothetical mental test The blue areas correspond to test specific variance s while the purple areas represent the variance attributed to g Factor analysis is a family of mathematical techniques that can be used to represent correlations between intelligence tests in terms of a smaller number of variables known as factors The purpose is to simplify the correlation matrix by using hypothetical underlying factors to explain the patterns in it When all correlations in a matrix are positive as they are in the case of IQ factor analysis will yield a general factor common to all tests The general factor of IQ tests is referred to as the g factor and it typically accounts for 40 to 50 percent of the variance in IQ test batteries 34 The presence of correlations between many widely varying cognitive tests has often been taken as evidence for the existence of g but McFarland 2012 showed that such correlations do not provide any more or less support for the existence of g than for the existence of multiple factors of intelligence 35 Charles Spearman developed factor analysis in order to study correlations between tests Initially he developed a model of intelligence in which variations in all intelligence test scores are explained by only two kinds of variables first factors that are specific to each test denoted s and second a g factor that accounts for the positive correlations across tests This is known as Spearman s two factor theory Later research based on more diverse test batteries than those used by Spearman demonstrated that g alone could not account for all correlations between tests Specifically it was found that even after controlling for g some tests were still correlated with each other This led to the postulation of group factors that represent variance that groups of tests with similar task demands e g verbal spatial or numerical have in common in addition to the shared g variance 36 nbsp An illustration of John B Carroll s three stratum theory an influential contemporary model of cognitive abilities The broad abilities recognized by the model are fluid intelligence Gf crystallized intelligence Gc general memory and learning Gy broad visual perception Gv broad auditory perception Gu broad retrieval ability Gr broad cognitive speediness Gs and processing speed Gt Carroll regarded the broad abilities as different flavors of g Through factor rotation it is in principle possible to produce an infinite number of different factor solutions that are mathematically equivalent in their ability to account for the intercorrelations among cognitive tests These include solutions that do not contain a g factor Thus factor analysis alone cannot establish what the underlying structure of intelligence is In choosing between different factor solutions researchers have to examine the results of factor analysis together with other information about the structure of cognitive abilities 37 There are many psychologically relevant reasons for preferring factor solutions that contain a g factor These include the existence of the positive manifold the fact that certain kinds of tests generally the more complex ones have consistently larger g loadings the substantial invariance of g factors across different test batteries the impossibility of constructing test batteries that do not yield a g factor and the widespread practical validity of g as a predictor of individual outcomes The g factor together with group factors best represents the empirically established fact that on average overall ability differences between individuals are greater than differences among abilities within individuals while a factor solution with orthogonal factors without g obscures this fact Moreover g appears to be the most heritable component of intelligence 38 Research utilizing the techniques of confirmatory factor analysis has also provided support for the existence of g 37 A g factor can be computed from a correlation matrix of test results using several different methods These include exploratory factor analysis principal components analysis PCA and confirmatory factor analysis Different factor extraction methods produce highly consistent results although PCA has sometimes been found to produce inflated estimates of the influence of g on test scores 19 39 There is a broad contemporary consensus that cognitive variance between people can be conceptualized at three hierarchical levels distinguished by their degree of generality At the lowest least general level there are many narrow first order factors at a higher level there are a relatively small number somewhere between five and ten of broad i e more general second order factors or group factors and at the apex there is a single third order factor g the general factor common to all tests 40 41 42 The g factor usually accounts for the majority of the total common factor variance of IQ test batteries 43 Contemporary hierarchical models of intelligence include the three stratum theory and the Cattell Horn Carroll theory 44 Indifference of the indicator editSpearman proposed the principle of the indifference of the indicator according to which the precise content of intelligence tests is unimportant for the purposes of identifying g because g enters into performance on all kinds of tests Any test can therefore be used as an indicator of g 6 Following Spearman Arthur Jensen more recently argued that a g factor extracted from one test battery will always be the same within the limits of measurement error as that extracted from another battery provided that the batteries are large and diverse 45 According to this view every mental test no matter how distinctive calls on g to some extent Thus a composite score of a number of different tests will load onto g more strongly than any of the individual test scores because the g components cumulate into the composite score while the uncorrelated non g components will cancel each other out Theoretically the composite score of an infinitely large diverse test battery would then be a perfect measure of g 46 In contrast L L Thurstone argued that a g factor extracted from a test battery reflects the average of all the abilities called for by the particular battery and that g therefore varies from one battery to another and has no fundamental psychological significance 47 Along similar lines John Horn argued that g factors are meaningless because they are not invariant across test batteries maintaining that correlations between different ability measures arise because it is difficult to define a human action that depends on just one ability 48 49 To show that different batteries reflect the same g one must administer several test batteries to the same individuals extract g factors from each battery and show that the factors are highly correlated This can be done within a confirmatory factor analysis framework 22 Wendy Johnson and colleagues have published two such studies 50 51 The first found that the correlations between g factors extracted from three different batteries were 99 99 and 1 00 supporting the hypothesis that g factors from different batteries are the same and that the identification of g is not dependent on the specific abilities assessed The second study found that g factors derived from four of five test batteries correlated at between 95 1 00 while the correlations ranged from 79 to 96 for the fifth battery the Cattell Culture Fair Intelligence Test the CFIT They attributed the somewhat lower correlations with the CFIT battery to its lack of content diversity for it contains only matrix type items and interpreted the findings as supporting the contention that g factors derived from different test batteries are the same provided that the batteries are diverse enough The results suggest that the same g can be consistently identified from different test batteries 40 52 This approach has been criticized by psychologist Lazar Stankov in the Handbook of Understanding and Measuring Intelligence who councluded Correlations between the g factors from different test batteries are not unity 53 A study authored by Scott Barry Kaufman and colleagues showed that the general factor extracted from the Woodjock Johnson cognitive abilities test and the general factor extracted from the Achievement test batteries are highly correlated but not isomorphic 54 Population distribution editThe form of the population distribution of g is unknown because g cannot be measured on a ratio scale clarification needed The distributions of scores on typical IQ tests are roughly normal but this is achieved by construction i e by normalizing the raw scores It has been argued who that there are nevertheless good reasons for supposing that g is normally distributed in the general population at least within a range of 2 standard deviations from the mean In particular g can be thought of as a composite variable that reflects the additive effects of many independent genetic and environmental influences and such a variable should according to the central limit theorem follow a normal distribution 55 Spearman s law of diminishing returns editA number of researchers have suggested that the proportion of variation accounted for by g may not be uniform across all subgroups within a population Spearman s law of diminishing returns SLODR also termed the cognitive ability differentiation hypothesis predicts that the positive correlations among different cognitive abilities are weaker among more intelligent subgroups of individuals More specifically SLODR predicts that the g factor will account for a smaller proportion of individual differences in cognitive tests scores at higher scores on the g factor SLODR was originally proposed by Charles Spearman 56 who reported that the average correlation between 12 cognitive ability tests was 466 in 78 normal children and 782 in 22 defective children Detterman and Daniel rediscovered this phenomenon in 1989 57 They reported that for subtests of both the WAIS and the WISC subtest intercorrelations decreased monotonically with ability group ranging from approximately an average intercorrelation of 7 among individuals with IQs less than 78 to 4 among individuals with IQs greater than 122 58 SLODR has been replicated in a variety of child and adult samples who have been measured using broad arrays of cognitive tests The most common approach has been to divide individuals into multiple ability groups using an observable proxy for their general intellectual ability and then to either compare the average interrelation among the subtests across the different groups or to compare the proportion of variation accounted for by a single common factor in the different groups 59 However as both Deary et al 1996 59 and Tucker Drob 2009 60 have pointed out dividing the continuous distribution of intelligence into an arbitrary number of discrete ability groups is less than ideal for examining SLODR Tucker Drob 2009 60 extensively reviewed the literature on SLODR and the various methods by which it had been previously tested and proposed that SLODR could be most appropriately captured by fitting a common factor model that allows the relations between the factor and its indicators to be nonlinear in nature He applied such a factor model to a nationally representative data of children and adults in the United States and found consistent evidence for SLODR For example Tucker Drob 2009 found that a general factor accounted for approximately 75 of the variation in seven different cognitive abilities among very low IQ adults but only accounted for approximately 30 of the variation in the abilities among very high IQ adults A recent meta analytic study by Blum and Holling 61 also provided support for the differentiation hypothesis As opposed to most research on the topic this work made it possible to study ability and age variables as continuous predictors of the g saturation and not just to compare lower vs higher skilled or younger vs older groups of testees Results demonstrate that the mean correlation and g loadings of cognitive ability tests decrease with increasing ability yet increase with respondent age SLODR as described by Charles Spearman could be confirmed by a g saturation decrease as a function of IQ as well as a g saturation increase from middle age to senescence Specifically speaking for samples with a mean intelligence that is two standard deviations i e 30 IQ points higher the mean correlation to be expected is decreased by approximately 15 points The question remains whether a difference of this magnitude could result in a greater apparent factorial complexity when cognitive data are factored for the higher ability sample as opposed to the lower ability sample It seems likely that greater factor dimensionality should tend to be observed for the case of higher ability but the magnitude of this effect i e how much more likely and how many more factors remains uncertain Practical validity editThe extent of the practical validity of g as a predictor of educational economic and social outcomes is the subject of ongoing debate 62 Some researchers have argued that it is more far ranging and universal than any other known psychological variable 63 and that the validity of g increases as the complexity of the measured task increases 64 65 Others have argued that tests of specific abilities outperform g factor in analyses fitted to certain real world situations 66 67 68 A test s practical validity is measured by its correlation with performance on some criterion external to the test such as college grade point average or a rating of job performance The correlation between test scores and a measure of some criterion is called the validity coefficient One way to interpret a validity coefficient is to square it to obtain the variance accounted by the test For example a validity coefficient of 30 corresponds to 9 percent of variance explained This approach has however been criticized as misleading and uninformative and several alternatives have been proposed One arguably more interpretable approach is to look at the percentage of test takers in each test score quintile who meet some agreed upon standard of success For example if the correlation between test scores and performance is 30 the expectation is that 67 percent of those in the top quintile will be above average performers compared to 33 percent of those in the bottom quintile 69 70 Academic achievement edit The predictive validity of g is most conspicuous in the domain of scholastic performance This is apparently because g is closely linked to the ability to learn novel material and understand concepts and meanings 64 In elementary school the correlation between IQ and grades and achievement scores is between 60 and 70 At more advanced educational levels more students from the lower end of the IQ distribution drop out which restricts the range of IQs and results in lower validity coefficients In high school college and graduate school the validity coefficients are 50 60 40 50 and 30 40 respectively The g loadings of IQ scores are high but it is possible that some of the validity of IQ in predicting scholastic achievement is attributable to factors measured by IQ independent of g According to research by Robert L Thorndike 80 to 90 percent of the predictable variance in scholastic performance is due to g with the rest attributed to non g factors measured by IQ and other tests 71 Achievement test scores are more highly correlated with IQ than school grades This may be because grades are more influenced by the teacher s idiosyncratic perceptions of the student 72 In a longitudinal English study g scores measured at age 11 correlated with all the 25 subject tests of the national GCSE examination taken at age 16 The correlations ranged from 77 for the mathematics test to 42 for the art test The correlation between g and a general educational factor computed from the GCSE tests was 81 73 Research suggests that the SAT widely used in college admissions is primarily a measure of g A correlation of 82 has been found between g scores computed from an IQ test battery and SAT scores In a study of 165 000 students at 41 U S colleges SAT scores were found to be correlated at 47 with first year college grade point average after correcting for range restriction in SAT scores the correlation rises to 55 when course difficulty is held constant i e if all students attended the same set of classes 69 74 Job attainment edit There is a high correlation of 90 to 95 between the prestige rankings of occupations as rated by the general population and the average general intelligence scores of people employed in each occupation At the level of individual employees the association between job prestige and g is lower one large U S study reported a correlation of 65 72 corrected for attenuation Mean level of g thus increases with perceived job prestige It has also been found that the dispersion of general intelligence scores is smaller in more prestigious occupations than in lower level occupations suggesting that higher level occupations have minimum g requirements 75 76 Job performance edit Research indicates that tests of g are the best single predictors of job performance with an average validity coefficient of 55 across several meta analyses of studies based on supervisor ratings and job samples The average meta analytic validity coefficient for performance in job training is 63 77 The validity of g in the highest complexity jobs professional scientific and upper management jobs has been found to be greater than in the lowest complexity jobs but g has predictive validity even for the simplest jobs Research also shows that specific aptitude tests tailored for each job provide little or no increase in predictive validity over tests of general intelligence It is believed that g affects job performance mainly by facilitating the acquisition of job related knowledge The predictive validity of g is greater than that of work experience and increased experience on the job does not decrease the validity of g 64 75 In a 2011 meta analysis researchers found that general cognitive ability GCA predicted job performance better than personality Five factor model and three streams of emotional intelligence They examined the relative importance of these constructs on predicting job performance and found that cognitive ability explained most of the variance in job performance 78 Other studies suggested that GCA and emotional intelligence have a linear independent and complementary contribution to job performance Cote and Miners 2015 79 found that these constructs are interrelated when assessing their relationship with two aspects of job performance organisational citizenship behaviour OCB and task performance Emotional intelligence is a better predictor of task performance and OCB when GCA is low and vice versa For instance an employee with low GCA will compensate his her task performance and OCB if emotional intelligence is high Although these compensatory effects favour emotional intelligence GCA still remains as the best predictor of job performance Several researchers have studied the correlation between GCA and job performance among different job positions For instance Ghiselli 1973 80 found that salespersons had a higher correlation than sales clerk The former obtained a correlation of 0 61 for GCA 0 40 for perceptual ability and 0 29 for psychomotor abilities whereas sales clerk obtained a correlation of 0 27 for GCA 0 22 for perceptual ability and 0 17 for psychomotor abilities 81 Other studies compared GCA job performance correlation between jobs of different complexity Hunter and Hunter 1984 82 developed a meta analysis with over 400 studies and found that this correlation was higher for jobs of high complexity 0 57 Followed by jobs of medium complexity 0 51 and low complexity 0 38 Job performance is measured by objective rating performance and subjective ratings Although the former is better than subjective ratings most of studies in job performance and GCA have been based on supervisor performance ratings This rating criterion is considered problematic and unreliable mainly because of its difficulty to define what is a good and bad performance Rating of supervisors tends to be subjective and inconsistent among employees 83 Additionally supervisor rating of job performance is influenced by different factors such as halo effect 84 facial attractiveness 85 racial or ethnic bias and height of employees 86 However Vinchur Schippmann Switzer and Roth 1998 81 found in their study with sales employees that objective sales performance had a correlation of 0 04 with GCA while supervisor performance rating got a correlation of 0 40 These findings were surprising considering that the main criterion for assessing these employees would be the objective sales In understanding how GCA is associated job performance several researchers concluded that GCA affects acquisition of job knowledge which in turn improves job performance In other words people high in GCA are capable to learn faster and acquire more job knowledge easily which allow them to perform better Conversely lack of ability to acquire job knowledge will directly affect job performance This is due to low levels of GCA Also GCA has a direct effect on job performance In a daily basis employees are exposed constantly to challenges and problem solving tasks which success depends solely on their GCA These findings are discouraging for governmental entities in charge of protecting rights of workers 87 Because of the high correlation of GCA on job performance companies are hiring employees based on GCA tests scores Inevitably this practice is denying the opportunity to work to many people with low GCA 88 Previous researchers have found significant differences in GCA between race ethnicity groups For instance there is a debate whether studies were biased against Afro Americans who scored significantly lower than white Americans in GCA tests 89 However findings on GCA job performance correlation must be taken carefully Some researchers have warned the existence of statistical artifacts related to measures of job performance and GCA test scores For example Viswesvaran Ones and Schmidt 1996 90 argued that is quite impossible to obtain perfect measures of job performance without incurring in any methodological error Moreover studies on GCA and job performance are always susceptible to range restriction because data is gathered mostly from current employees neglecting those that were not hired Hence sample comes from employees who successfully passed hiring process including measures of GCA 91 Income edit The correlation between income and g as measured by IQ scores averages about 40 across studies The correlation is higher at higher levels of education and it increases with age stabilizing when people reach their highest career potential in middle age Even when education occupation and socioeconomic background are held constant the correlation does not vanish 92 Other correlates edit See also Evolution of human intelligence Social exchange theory Evolutionary aesthetics Evolutionary linguistics Evolutionary musicology Sexual selection in humans Social selection and Wason selection task The g factor is reflected in many social outcomes Many social behavior problems such as dropping out of school chronic welfare dependency accident proneness and crime are negatively correlated with g independent of social class of origin 93 Health and mortality outcomes are also linked to g with higher childhood test scores predicting better health and mortality outcomes in adulthood see Cognitive epidemiology 94 In 2004 psychologist Satoshi Kanazawa argued that g was a domain specific species typical information processing psychological adaptation 95 and in 2010 Kanazawa argued that g correlated only with performance on evolutionarily unfamiliar rather than evolutionarily familiar problems proposing what he termed the Savanna IQ interaction hypothesis 96 97 In 2006 Psychological Review published a comment reviewing Kanazawa s 2004 article by psychologists Denny Borsboom and Conor Dolan that argued that Kanazawa s conception of g was empirically unsupported and purely hypothetical and that an evolutionary account of g must address it as a source of individual differences 98 and in response to Kanazawa s 2010 article psychologists Scott Barry Kaufman Colin G DeYoung Deirdre Reis and Jeremy R Gray published a study in 2011 in Intelligence of 112 subjects taking a 70 item computer version of the Wason selection task a logic puzzle in a social relations context as proposed by evolutionary psychologists Leda Cosmides and John Tooby in The Adapted Mind 99 and found instead that performance on non arbitrary evolutionarily familiar problems is more strongly related to general intelligence than performance on arbitrary evolutionarily novel problems 100 101 Genetic and environmental determinants editMain article Heritability of IQ Heritability is the proportion of phenotypic variance in a trait in a population that can be attributed to genetic factors The heritability of g has been estimated to fall between 40 and 80 percent using twin adoption and other family study designs as well as molecular genetic methods Estimates based on the totality of evidence place the heritability of g at about 50 102 It has been found to increase linearly with age For example a large study involving more than 11 000 pairs of twins from four countries reported the heritability of g to be 41 percent at age nine 55 percent at age twelve and 66 percent at age seventeen Other studies have estimated that the heritability is as high as 80 percent in adulthood although it may decline in old age Most of the research on the heritability of g has been conducted in the United States and Western Europe but studies in Russia Moscow the former East Germany Japan and rural India have yielded similar estimates of heritability as Western studies 40 103 104 105 As with heritability in general the heritability of g can be understood in reference to a specific population at a specific place and time and findings for one population do not apply to a different population that is exposed to different environmental factors 106 A population that is exposed to strong environmental factors can be expected to have a lower level of heritability than a population that is exposed to only weak environmental factors For example one twin study found that genotype differences almost completely explain the variance in IQ scores within affluent families but make close to zero contribution towards explaining IQ score differences in impoverished families 107 Notably heritability findings also only refer to total variation within a population and do not support a genetic explanation for differences between groups 108 It is theoretically possible for the differences between the average g of two groups to be 100 due to environmental factors even if the variance within each group is 100 heritable Behavioral genetic research has also established that the shared or between family environmental effects on g are strong in childhood but decline thereafter and are negligible in adulthood This indicates that the environmental effects that are important to the development of g are unique and not shared between members of the same family 104 The genetic correlation is a statistic that indicates the extent to which the same genetic effects influence two different traits If the genetic correlation between two traits is zero the genetic effects on them are independent whereas a correlation of 1 0 means that the same set of genes explains the heritability of both traits regardless of how high or low the heritability of each is Genetic correlations between specific mental abilities such as verbal ability and spatial ability have been consistently found to be very high close to 1 0 This indicates that genetic variation in cognitive abilities is almost entirely due to genetic variation in whatever g is It also suggests that what is common among cognitive abilities is largely caused by genes and that independence among abilities is largely due to environmental effects Thus it has been argued that when genes for intelligence are identified they will be generalist genes each affecting many different cognitive abilities 104 109 110 Much research points to g being a highly polygenic trait influenced by many common genetic variants each having only small effects Another possibility is that heritable differences in g are due to individuals having different loads of rare deleterious mutations with genetic variation among individuals persisting due to mutation selection balance 110 111 A number of candidate genes have been reported to be associated with intelligence differences but the effect sizes have been small and almost none of the findings have been replicated No individual genetic variants have been conclusively linked to intelligence in the normal range so far Many researchers believe that very large samples will be needed to reliably detect individual genetic polymorphisms associated with g 40 111 However while genes influencing variation in g in the normal range have proven difficult to find many single gene disorders with intellectual disability among their symptoms have been discovered 112 It has been suggested that the g loading of mental tests have been found to correlate with heritability 33 but both the empirical data and statistical methodology bearing on this question are matters of active controversy 113 114 115 Several studies suggest that tests with larger g loadings are more affected by inbreeding depression lowering test scores citation needed There is also evidence that tests with larger g loadings are associated with larger positive heterotic effects on test scores which has been suggested to indicate the presence of genetic dominance effects for g 116 Neuroscientific findings editMain article Neuroscience and intelligence g has a number of correlates in the brain Studies using magnetic resonance imaging MRI have established that g and total brain volume are moderately correlated r 3 4 External head size has a correlation of 2 with g MRI research on brain regions indicates that the volumes of frontal parietal and temporal cortices and the hippocampus are also correlated with g generally at 25 or more while the correlations averaged over many studies with overall grey matter and overall white matter have been found to be 31 and 27 respectively Some but not all studies have also found positive correlations between g and cortical thickness However the underlying reasons for these associations between the quantity of brain tissue and differences in cognitive abilities remain largely unknown 2 Most researchers believe that intelligence cannot be localized to a single brain region such as the frontal lobe Brain lesion studies have found small but consistent associations indicating that people with more white matter lesions tend to have lower cognitive ability Research utilizing NMR spectroscopy has discovered somewhat inconsistent but generally positive correlations between intelligence and white matter integrity supporting the notion that white matter is important for intelligence 2 Some research suggests that aside from the integrity of white matter also its organizational efficiency is related to intelligence The hypothesis that brain efficiency has a role in intelligence is supported by functional MRI research showing that more intelligent people generally process information more efficiently i e they use fewer brain resources for the same task than less intelligent people 2 Small but relatively consistent associations with intelligence test scores include also brain activity as measured by EEG records or event related potentials and nerve conduction velocity 117 118 g in non humans editMain article g factor in non humans Evidence of a general factor of intelligence has also been observed in non human animals Studies have shown that g is responsible for 47 of the variance at the species level in primates 119 and around 55 of the individual variance observed in mice 120 121 A review and meta analysis of general intelligence however found that the average correlation among cognitive abilities was 0 18 and suggested that overall support for g is weak in non human animals 122 While not able to be assessed using the same intelligence measures used in humans cognitive ability can be measured with a variety of interactive and observational tools focusing on innovation habit reversal social learning and responses to novelty Non human models of g such as mice are used to study genetic influences on intelligence and neurological developmental research into the mechanisms behind and biological correlates of g 123 g or c in human groups editMain article Collective intelligenceSimilar to g for individuals a new research path aims to extract a general collective intelligence factor c for groups displaying a group s general ability to perform a wide range of tasks 124 Definition operationalization and statistical approach for this c factor are derived from and similar to g Causes predictive validity as well as additional parallels to g are investigated 125 Other biological associations editHeight is correlated with intelligence r 2 but this correlation has not generally been found within families i e among siblings suggesting that it results from cross assortative mating for height and intelligence or from another factor that correlates with both e g nutrition Myopia is known to be associated with intelligence with a correlation of around 2 to 25 and this association has been found within families too 126 Group similarities and differences editSee also Sex differences in intelligence and Race and intelligence Cross cultural studies indicate that the g factor can be observed whenever a battery of diverse complex cognitive tests is administered to a human sample The factor structure of IQ tests has also been found to be consistent across sexes and ethnic groups in the U S and elsewhere 118 The g factor has been found to be the most invariant of all factors in cross cultural comparisons For example when the g factors computed from an American standardization sample of Wechsler s IQ battery and from large samples who completed the Japanese translation of the same battery were compared the congruence coefficient was 99 indicating virtual identity Similarly the congruence coefficient between the g factors obtained from white and black standardization samples of the WISC battery in the U S was 995 and the variance in test scores accounted for by g was highly similar for both groups 127 Most studies suggest that there are negligible differences in the mean level of g between the sexes but that sex differences in cognitive abilities are to be found in more narrow domains For example males generally outperform females in spatial tasks while females generally outperform males in verbal tasks 128 Another difference that has been found in many studies is that males show more variability in both general and specific abilities than females with proportionately more males at both the low end and the high end of the test score distribution 129 Differences in g between racial and ethnic groups have been found particularly in the U S between black and white identifying test takers though these differences appear to have diminished significantly over time 114 and to be attributable to environmental rather than genetic causes 114 130 Some researchers have suggested that the magnitude of the black white gap in cognitive test results is dependent on the magnitude of the test s g loading with tests showing higher g loading producing larger gaps see Spearman s hypothesis 131 while others have criticized this view as methodologically unfounded 132 133 Still others have noted that despite the increasing g loading of IQ test batteries over time the performance gap between racial groups continues to diminish 114 Comparative analysis has shown that while a gap of approximately 1 1 standard deviation in mean IQ around 16 points between white and black Americans existed in the late 1960s between 1972 and 2002 black Americans gained between 4 and 7 IQ points relative to non Hispanic Whites and that the g gap between Blacks and Whites declined virtually in tandem with the IQ gap 114 In contrast Americans of East Asian descent generally slightly outscore white Americans 134 It has been claimed that racial and ethnic differences similar to those found in the U S can be observed globally 135 but the significance methodological grounding and truth of such claims have all been disputed 136 137 138 139 140 141 Relation to other psychological constructs editElementary cognitive tasks edit Main articles Elementary cognitive task and Mental chronometry nbsp An illustration of the Jensen box an apparatus for measuring choice reaction time Elementary cognitive tasks ECTs also correlate strongly with g ECTs are as the name suggests simple tasks that apparently require very little intelligence but still correlate strongly with more exhaustive intelligence tests Determining whether a light is red or blue and determining whether there are four or five squares drawn on a computer screen are two examples of ECTs The answers to such questions are usually provided by quickly pressing buttons Often in addition to buttons for the two options provided a third button is held down from the start of the test When the stimulus is given to the subject they remove their hand from the starting button to the button of the correct answer This allows the examiner to determine how much time was spent thinking about the answer to the question reaction time usually measured in small fractions of second and how much time was spent on physical hand movement to the correct button movement time Reaction time correlates strongly with g while movement time correlates less strongly 142 ECT testing has allowed quantitative examination of hypotheses concerning test bias subject motivation and group differences By virtue of their simplicity ECTs provide a link between classical IQ testing and biological inquiries such as fMRI studies Working memory edit One theory holds that g is identical or nearly identical to working memory capacity Among other evidence for this view some studies have found factors representing g and working memory to be perfectly correlated However in a meta analysis the correlation was found to be considerably lower 143 One criticism that has been made of studies that identify g with working memory is that we do not advance understanding by showing that one mysterious concept is linked to another 144 Piagetian tasks edit Psychometric theories of intelligence aim at quantifying intellectual growth and identifying ability differences between individuals and groups In contrast Jean Piaget s theory of cognitive development seeks to understand qualitative changes in children s intellectual development Piaget designed a number of tasks to verify hypotheses arising from his theory The tasks were not intended to measure individual differences and they have no equivalent in psychometric intelligence tests 145 146 For example in one of the best known Piagetian conservation tasks a child is asked if the amount of water in two identical glasses is the same After the child agrees that the amount is the same the investigator pours the water from one of the glasses into a glass of different shape so that the amount appears different although it remains the same The child is then asked if the amount of water in the two glasses is the same or different Notwithstanding the different research traditions in which psychometric tests and Piagetian tasks were developed the correlations between the two types of measures have been found to be consistently positive and generally moderate in magnitude A common general factor underlies them It has been shown that it is possible to construct a battery consisting of Piagetian tasks that is as good a measure of g as standard IQ tests 145 147 Personality edit Main article Intelligence and personality The traditional view in psychology is that there is no meaningful relationship between personality and intelligence and that the two should be studied separately Intelligence can be understood in terms of what an individual can do or what his or her maximal performance is while personality can be thought of in terms of what an individual will typically do or what his or her general tendencies of behavior are Research has indicated that correlations between measures of intelligence and personality are small and it has thus been argued that g is a purely cognitive variable that is independent of personality traits In a 2007 meta analysis the correlations between g and the Big Five personality traits were found to be as follows conscientiousness 04 agreeableness 00 extraversion 02 openness 22 emotional stability 09The same meta analysis found a correlation of 20 between self efficacy and g 148 149 150 Some researchers have argued that the associations between intelligence and personality albeit modest are consistent They have interpreted correlations between intelligence and personality measures in two main ways The first perspective is that personality traits influence performance on intelligence tests For example a person may fail to perform at a maximal level on an IQ test due to his or her anxiety and stress proneness The second perspective considers intelligence and personality to be conceptually related with personality traits determining how people apply and invest their cognitive abilities leading to knowledge expansion and greater cognitive differentiation 148 151 Creativity edit Some researchers believe that there is a threshold level of g below which socially significant creativity is rare but that otherwise there is no relationship between the two It has been suggested that this threshold is at least one standard deviation above the population mean Above the threshold personality differences are believed to be important determinants of individual variation in creativity 152 153 Others have challenged the threshold theory While not disputing that opportunity and personal attributes other than intelligence such as energy and commitment are important for creativity they argue that g is positively associated with creativity even at the high end of the ability distribution The longitudinal Study of Mathematically Precocious Youth has provided evidence for this contention It has showed that individuals identified by standardized tests as intellectually gifted in early adolescence accomplish creative achievements for example securing patents or publishing literary or scientific works at several times the rate of the general population and that even within the top 1 percent of cognitive ability those with higher ability are more likely to make outstanding achievements The study has also suggested that the level of g acts as a predictor of the level of achievement while specific cognitive ability patterns predict the realm of achievement 154 155 Criticism editRelation with Eugenics and Racialism edit Research on the G factor as well as other psychometric values has been widely criticized for not properly taking into account the eugencist background of its research practices 156 The reductionism of the G factor has been attributted to having evolved from pseudoscientific theories about race and intelligence 157 Spearman s g and the concept of inherited immutable intelligence were a boon for eugenicists and pseudoscientists alike 158 Joseph Graves Jr and Amanda Johnson have argued that g is to the psychometricians what Huygens ether was to early physicists a nonentity taken as an article of faith instead of one in need of verification by real data 159 Some especially harsh critics have called the g factor and psychometrics as a form of pseudoscience 160 Gf Gc theory edit Main article Fluid and crystallized intelligence Raymond Cattell a student of Charles Spearman s modified the unitary g factor model and divided g into two broad relatively independent domains fluid intelligence Gf and crystallized intelligence Gc Gf is conceptualized as a capacity to figure out novel problems and it is best assessed with tests with little cultural or scholastic content such as Raven s matrices Gc can be thought of as consolidated knowledge reflecting the skills and information that an individual acquires and retains throughout his or her life Gc is dependent on education and other forms of acculturation and it is best assessed with tests that emphasize scholastic and cultural knowledge 2 44 161 Gf can be thought to primarily consist of current reasoning and problem solving capabilities while Gc reflects the outcome of previously executed cognitive processes 162 The rationale for the separation of Gf and Gc was to explain individuals cognitive development over time While Gf and Gc have been found to be highly correlated they differ in the way they change over a lifetime Gf tends to peak at around age 20 slowly declining thereafter In contrast Gc is stable or increases across adulthood A single general factor has been criticized as obscuring this bifurcated pattern of development Cattell argued that Gf reflected individual differences in the efficiency of the central nervous system Gc was in Cattell s thinking the result of a person investing his or her Gf in learning experiences throughout life 2 30 44 163 Cattell together with John Horn later expanded the Gf Gc model to include a number of other broad abilities such as Gq quantitative reasoning and Gv visual spatial reasoning While all the broad ability factors in the extended Gf Gc model are positively correlated and thus would enable the extraction of a higher order g factor Cattell and Horn maintained that it would be erroneous to posit that a general factor underlies these broad abilities They argued that g factors computed from different test batteries are not invariant and would give different values of g and that the correlations among tests arise because it is difficult to test just one ability at a time 2 48 164 However several researchers have suggested that the Gf Gc model is compatible with a g centered understanding of cognitive abilities For example John B Carroll s three stratum model of intelligence includes both Gf and Gc together with a higher order g factor Based on factor analyses of many data sets some researchers have also argued that Gf and g are one and the same factor and that g factors from different test batteries are substantially invariant provided that the batteries are large and diverse 44 165 166 Theories of uncorrelated abilities edit Several theorists have proposed that there are intellectual abilities that are uncorrelated with each other Among the earliest was L L Thurstone who created a model of primary mental abilities representing supposedly independent domains of intelligence However Thurstone s tests of these abilities were found to produce a strong general factor He argued that the lack of independence among his tests reflected the difficulty of constructing factorially pure tests that measured just one ability Similarly J P Guilford proposed a model of intelligence that comprised up to 180 distinct uncorrelated abilities and claimed to be able to test all of them Later analyses have shown that the factorial procedures Guilford presented as evidence for his theory did not provide support for it and that the test data that he claimed provided evidence against g did in fact exhibit the usual pattern of intercorrelations after correction for statistical artifacts 167 168 More recently Howard Gardner has developed the theory of multiple intelligences He posits the existence of nine different and independent domains of intelligence such as mathematical linguistic spatial musical bodily kinesthetic meta cognitive and existential intelligences and contends that individuals who fail in some of them may excel in others According to Gardner tests and schools traditionally emphasize only linguistic and logical abilities while neglecting other forms of intelligence While popular among educationalists Gardner s theory has been much criticized by psychologists and psychometricians One criticism is that the theory does violence to both scientific and everyday usages of the word intelligence Several researchers have argued that not all of Gardner s intelligences fall within the cognitive sphere For example Gardner contends that a successful career in professional sports or popular music reflects bodily kinesthetic intelligence and musical intelligence respectively even though one might usually talk of athletic and musical skills talents or abilities instead Another criticism of Gardner s theory is that many of his purportedly independent domains of intelligence are in fact correlated with each other Responding to empirical analyses showing correlations between the domains Gardner has argued that the correlations exist because of the common format of tests and because all tests require linguistic and logical skills His critics have in turn pointed out that not all IQ tests are administered in the paper and pencil format that aside from linguistic and logical abilities IQ test batteries contain also measures of for example spatial abilities and that elementary cognitive tasks for example inspection time and reaction time that do not involve linguistic or logical reasoning correlate with conventional IQ batteries too 73 169 170 171 Robert Sternberg working with various colleagues has also suggested that intelligence has dimensions independent of g He argues that there are three classes of intelligence analytic practical and creative According to Sternberg traditional psychometric tests measure only analytic intelligence and should be augmented to test creative and practical intelligence as well He has devised several tests to this effect Sternberg equates analytic intelligence with academic intelligence and contrasts it with practical intelligence defined as an ability to deal with ill defined real life problems Tacit intelligence is an important component of practical intelligence consisting of knowledge that is not explicitly taught but is required in many real life situations Assessing creativity independent of intelligence tests has traditionally proved difficult but Sternberg and colleagues have claimed to have created valid tests of creativity too The validation of Sternberg s theory requires that the three abilities tested are substantially uncorrelated and have independent predictive validity Sternberg has conducted many experiments which he claims confirm the validity of his theory but several researchers have disputed this conclusion For example in his reanalysis of a validation study of Sternberg s STAT test Nathan Brody showed that the predictive validity of the STAT a test of three allegedly independent abilities was almost solely due to a single general factor underlying the tests which Brody equated with the g factor 172 173 Flynn s model edit James Flynn has argued that intelligence should be conceptualized at three different levels brain physiology cognitive differences between individuals and social trends in intelligence over time According to this model the g factor is a useful concept with respect to individual differences but its explanatory power is limited when the focus of investigation is either brain physiology or especially the effect of social trends on intelligence Flynn has criticized the notion that cognitive gains over time or the Flynn effect are hollow if they cannot be shown to be increases in g He argues that the Flynn effect reflects shifting social priorities and individuals adaptation to them To apply the individual differences concept of g to the Flynn effect is to confuse different levels of analysis On the other hand according to Flynn it is also fallacious to deny by referring to trends in intelligence over time that some individuals have better brains and minds to cope with the cognitive demands of their particular time At the level of brain physiology Flynn has emphasized both that localized neural clusters can be affected differently by cognitive exercise and that there are important factors that affect all neural clusters 174 The Mismeasure of Man edit Paleontologist and biologist Stephen Jay Gould presented a critique in his 1981 book The Mismeasure of Man He argued that psychometricians fallaciously reified the g factor into an ineluctable thing that provided a convenient explanation for human intelligence grounded only in mathematical theory rather than the rigorous application of mathematical theory to biological knowledge 175 An example is provided in the work of Cyril Burt published posthumously in 1972 The two main conclusions we have reached seem clear and beyond all question The hypothesis of a general factor entering into every type of cognitive process tentatively suggested by speculations derived from neurology and biology is fully borne out by the statistical evidence and the contention that differences in this general factor depend largely on the individual s genetic constitution appears incontestable The concept of an innate general cognitive ability which follows from these two assumptions though admittedly sheerly an abstraction is thus wholly consistent with the empirical facts 176 Critique of Gould edit Several researchers have criticized Gould s arguments For example they have rejected the accusation of reification maintaining that the use of extracted factors such as g as potential causal variables whose reality can be supported or rejected by further investigations constitutes a normal scientific practice that in no way distinguishes psychometrics from other sciences Critics have also suggested that Gould did not understand the purpose of factor analysis and that he was ignorant of relevant methodological advances in the field While different factor solutions may be mathematically equivalent in their ability to account for intercorrelations among tests solutions that yield a g factor are psychologically preferable for several reasons extrinsic to factor analysis including the phenomenon of the positive manifold the fact that the same g can emerge from quite different test batteries the widespread practical validity of g and the linkage of g to many biological variables 37 38 177 page needed Other critiques of g edit John Horn and John McArdle have argued that the modern g theory as espoused by for example Arthur Jensen is unfalsifiable because the existence of a common factor like g follows tautologically from positive correlations among tests They contrasted the modern hierarchical theory of g with Spearman s original two factor theory which was readily falsifiable and indeed was falsified 30 See also editCharles Spearman English psychologist 1863 1945 Factor analysis in psychometrics Statistical method Fluid and crystallized intelligence Factors of general intelligence Flynn effect 20th century rise in intelligence test scores Intelligence Ability to perceive infer acquire retain and apply information Intelligence quotient Score from a test designed to assess intelligence Malleability of intelligence Processes by which intelligence can change over time Spearman s hypothesis Eugenics Aim to improve perceived human genetic qualityReferences edit a b Kamphaus et al 2005 a b c d e f g h Deary et al 2010 Schlinger Henry D 2003 The myth of intelligence The Psychological Record 53 1 15 32 THOMSON GODFREY H September 1916 A Hierarchy Without a General Factor1 British Journal of Psychology 8 3 271 281 doi 10 1111 j 2044 8295 1916 tb00133 x ISSN 0950 5652 Jensen 1998 545 a b Warne Russell T Burningham Cassidy 2019 Spearman s g found in 31 non Western nations Strong evidence that g is a universal phenomenon Psychological Bulletin 145 3 237 272 doi 10 1037 bul0000184 PMID 30640496 S2CID 58625266 Adapted from Jensen 1998 24 The correlation matrix was originally published in Spearman 1904 and it is based on the school performance of a sample of English children While this analysis is historically important and has been highly influential it does not meet modern technical standards See Mackintosh 2011 44ff and Horn amp McArdle 2007 for discussion of Spearman s methods Adapted from Chabris 2007 Table 19 1 Gottfredson 1998 Deary I J 2001 Intelligence A Very Short Introduction Oxford University Press p 12 ISBN 9780192893215 Spearman 1904 Deary 2000 6 a b c d Jensen 1992 Jensen 1998 28 a b c d van deer Maas et al 2006 Jensen 1998 26 36 39 Jensen 1998 26 36 39 89 90 a b Jensen 2002 a b Floyd et al 2009 a b Jensen 1980 213 Jensen 1998 94 a b Hunt 2011 94 Jensen 1998 18 19 35 36 38 The idea of a general unitary mental ability was introduced to psychology by Herbert Spencer and Francis Galton in the latter half of the 19th century but their work was largely speculative with little empirical basis Jensen 1998 91 92 95 Jensen 2000 Mackintosh 2011 157 Jensen 1998 117 Bartholomew et al 2009 Jensen 1998 120 a b c Horn amp McArdle 2007 Jensen 1998 120 121 Mackintosh 2011 157 158 a b Rushton amp Jensen 2010 Mackintosh 2011 44 45 McFarland Dennis J 2012 A single g factor is not necessary to simulate positive correlations between cognitive tests Journal of Clinical and Experimental Neuropsychology 34 4 378 384 doi 10 1080 13803395 2011 645018 ISSN 1744 411X PMID 22260190 S2CID 4694545 The fact that diverse cognitive tests tend to be positively correlated has been taken as evidence for a single general ability or g factor the presence of a positive manifold in the correlations between diverse cognitive tests does not provide differential support for either single factor or multiple factor models of general abilities Jensen 1998 18 31 32 a b c Carroll 1995 a b Jensen 1982 Jensen 1998 73 a b c d Deary 2012 Mackintosh 2011 57 Jensen 1998 46 Carroll 1997 The total common factor variance consists of the variance due to the g factor and the group factors considered together The variance not accounted for by the common factors referred to as uniqueness comprises subtest specific variance and measurement error a b c d Davidson amp Kemp 2011 Mackintosh 2011 151 Jensen 1998 31 Mackintosh 2011 151 153 a b McGrew 2005 Kvist amp Gustafsson 2008 Johnson et al 2004 Johnson et al 2008 Mackintosh 2011 150 153 See also Keith et al 2001 where the g factors from the CAS and WJ III test batteries were found to be statistically indistinguishable and Stauffer et al 1996 where similar results were found for the ASVAB battery and a battery of cognitive components based tests G factor Issue of design and interpretation Kaufman Scott Barry Reynolds Matthew R Liu Xin Kaufman Alan S McGrew Kevin S 2012 Are cognitive g and academic achievement g one and the same g An exploration on the Woodcock Johnson and Kaufman tests Intelligence 40 2 123 138 doi 10 1016 j intell 2012 01 009 Jensen 1998 88 101 103 Spearman C 1927 The abilities of man New York MacMillan Detterman D K Daniel M H 1989 Correlations of mental tests with each other and with cognitive variables are highest for low IQ groups Intelligence 13 4 349 359 doi 10 1016 s0160 2896 89 80007 8 Deary amp Pagliari 1991 a b Deary et al 1996 a b Tucker Drob 2009 Blum D Holling H 2017 Spearman s Law of Diminishing Returns A meta analysis Intelligence 65 60 66 doi 10 1016 j intell 2017 07 004 Kell Harrison J Lang Jonas W B September 2018 The Great Debate General Ability and Specific Abilities in the Prediction of Important Outcomes Journal of Intelligence 6 3 39 doi 10 3390 jintelligence6030039 PMC 6480721 PMID 31162466 Neubauer Aljoscha C Opriessnig Sylvia January 2014 The Development of Talent and Excellence Do Not Dismiss Psychometric Intelligence the Potentially Most Powerful Predictor Talent Development amp Excellence 6 2 1 15 a b c Jensen 1998 270 Gottfredson 2002 Coyle Thomas R September 2018 Non g Factors Predict Educational and Occupational Criteria More than g Journal of Intelligence 6 3 43 doi 10 3390 jintelligence6030043 PMC 6480787 PMID 31162470 Ziegler Matthias Peikert Aaron September 2018 How Specific Abilities Might Throw g a Curve An Idea on How to Capitalize on the Predictive Validity of Specific Cognitive Abilities Journal of Intelligence 6 3 41 doi 10 3390 jintelligence6030041 PMC 6480727 PMID 31162468 Kell Harrison J Lang Jonas W B April 2017 Specific Abilities in the Workplace More Important Than g Journal of Intelligence 5 2 13 doi 10 3390 jintelligence5020013 PMC 6526462 PMID 31162404 a b Sackett et al 2008 Jensen 1998 272 301 Jensen 1998 279 280 Jensen 1998 279 a b Brody 2006 Frey amp Detterman 2004 a b Schmidt amp Hunter 2004 Jensen 1998 292 293 Schmidt amp Hunter 2004 These validity coefficients have been corrected for measurement error in the dependent variable i e job or training performance and for range restriction but not for measurement error in the independent variable i e measures of g O Boyle Jr E H Humphrey R H Pollack J M Hawver T H Story P A 2011 The relation between emotional intelligence and job performance A meta analysis Journal of Organizational Behavior 32 5 788 818 doi 10 1002 job 714 S2CID 6010387 Cote Stephane Miners Christopher 2006 Emotional Intelligence Cognitive Intelligence and Job Performance Administrative Science Quarterly 51 1 28 doi 10 2189 asqu 51 1 1 S2CID 142971341 Ghiselli E E 1973 The validity of aptitude tests in personnel selection Personnel Psychology 26 4 461 477 doi 10 1111 j 1744 6570 1973 tb01150 x a b Vinchur Andrew J Schippmann Jeffery S S Fred Switzer III Roth Philip L 1998 A meta analytic review of predictors of job performance for salespeople Journal of Applied Psychology 83 4 586 597 doi 10 1037 0021 9010 83 4 586 S2CID 19093290 Hunter John E Hunter Ronda F 1984 Validity and utility of alternative predictors of job performance Psychological Bulletin 96 1 72 98 doi 10 1037 0033 2909 96 1 72 S2CID 26858912 Gottfredson L S 1991 The evaluation of alternative measures of job performance Performance Assessment for the Workplace 75 126 Murphy Kevin R Balzer William K 1986 Systematic distortions in memory based behavior ratings and performance evaluations Consequences for rating accuracy Journal of Applied Psychology 71 1 39 44 doi 10 1037 0021 9010 71 1 39 Hosoda Megumi Stone Romero Eugene F Coats Gwen 1 June 2003 The Effects of Physical Attractiveness on Job Related Outcomes A Meta Analysis of Experimental Studies Personnel Psychology 56 2 431 462 doi 10 1111 j 1744 6570 2003 tb00157 x ISSN 1744 6570 Stauffer Joseph M Buckley M Ronald 2005 The Existence and Nature of Racial Bias in Supervisory Ratings Journal of Applied Psychology 90 3 586 591 doi 10 1037 0021 9010 90 3 586 PMID 15910152 Schmidt Frank L 1 April 2002 The Role of General Cognitive Ability and Job Performance Why There Cannot Be a Debate Human Performance 15 1 2 187 210 doi 10 1080 08959285 2002 9668091 ISSN 0895 9285 S2CID 214650608 Schmidt Frank L Hunter John E 1998 The validity and utility of selection methods in personnel psychology Practical and theoretical implications of 85 years of research findings Psychological Bulletin 124 2 262 274 CiteSeerX 10 1 1 172 1733 doi 10 1037 0033 2909 124 2 262 S2CID 16429503 Roth Philip L Bevier Craig A Bobko Philip Switzer Fred S Tyler Peggy 1 June 2001 Ethnic Group Differences in Cognitive Ability in Employment and Educational Settings A Meta Analysis Personnel Psychology 54 2 297 330 CiteSeerX 10 1 1 372 6092 doi 10 1111 j 1744 6570 2001 tb00094 x ISSN 1744 6570 Viswesvaran Chockalingam Ones Deniz S Schmidt Frank L 1996 Comparative analysis of the reliability of job performance ratings Journal of Applied Psychology 81 5 557 574 doi 10 1037 0021 9010 81 5 557 Hunter J E Schmidt F L Le H 2006 Implications of direct and indirect range restriction for meta analysis methods and findings Journal of Applied Psychology 91 3 594 612 doi 10 1037 0021 9010 91 3 594 PMID 16737357 S2CID 14897081 Jensen 1998 568 Jensen 1998 271 Gottfredson 2007 Kanazawa Satoshi 2004 General Intelligence as a Domain Specific Adaptation Psychological Review American Psychological Association 111 2 512 523 doi 10 1037 0033 295X 111 2 512 PMID 15065920 Kanazawa Satoshi 16 February 2010 Why Liberals and Atheists Are More Intelligent Social Psychology Quarterly 73 1 33 57 CiteSeerX 10 1 1 395 4490 doi 10 1177 0190272510361602 ISSN 0190 2725 S2CID 2642312 Kanazawa Satoshi May June 2010 Evolutionary Psychology and Intelligence Research PDF American Psychologist 65 4 279 289 doi 10 1037 a0019378 PMID 20455621 Retrieved 16 February 2018 Borsboom Denny Dolan Conor V 2006 Why g is not an adaptation a comment on Kanazawa 2004 Psychological Review 113 2 433 437 doi 10 1037 0033 295X 113 2 433 PMID 16637768 Cosmides Leda Tooby John 1995 1992 3 Cognitive Adaptations for Social Exchange In Barkow Jerome H Cosmides Leda Tooby John eds The Adapted Mind Evolutionary Psychology and the Generation of Culture New York Oxford University Press pp 179 206 ISBN 978 0195101072 Kaufman Scott Barry DeYoung Colin G Reis Deidre L Gray Jeremy R May June 2010 General intelligence predicts reasoning ability even for evolutionarily familiar content PDF Intelligence 39 5 311 322 doi 10 1016 j intell 2011 05 002 Retrieved 16 February 2018 Kaufman Scott Barry 2 July 2011 Is General Intelligence Compatible with Evolutionary Psychology Psychology Today Sussex Publishers Retrieved 16 February 2018 Plomin Robert Spinath Frank M April 2002 Genetics and general cognitive ability g Trends in Cognitive Sciences 6 4 169 176 doi 10 1016 s1364 6613 00 01853 2 ISSN 1364 6613 PMID 11912040 S2CID 17720084 Deary et al 2006 a b c Plomin amp Spinath 2004 Haworth et al 2010 Visscher Peter M Hill William G Wray Naomi R April 2008 Heritability in the genomics era concepts and misconceptions Nature Reviews Genetics 9 4 255 266 doi 10 1038 nrg2322 ISSN 1471 0064 PMID 18319743 S2CID 690431 Turkheimer Eric Haley Andreana Waldron Mary D Onofrio Brian Gottesman Irving I November 2003 Socioeconomic Status Modifies Heritability of IQ in Young Children Psychological Science 14 6 623 628 doi 10 1046 j 0956 7976 2003 psci 1475 x ISSN 0956 7976 PMID 14629696 S2CID 11265284 Visscher Peter M Hill William G Wray Naomi R 2008 Heritability in the genomics era concepts and misconceptions Nature Reviews Genetics 9 4 255 266 doi 10 1038 nrg2322 ISSN 1471 0064 PMID 18319743 S2CID 690431 Kovas amp Plomin 2006 a b Penke et al 2007 a b Chabris et al 2012 Plomin 2003 Ashton M C amp Lee K 2005 Problems with the method of correlated vectors Intelligence 33 4 431 444 a b c d e Dickens William T Flynn James R 2006 Black Americans Reduce the Racial IQ Gap Evidence from Standardization Samples PDF Psychological Science 17 10 913 920 doi 10 1111 j 1467 9280 2006 01802 x PMID 17100793 S2CID 6593169 Flynn J R 2010 The spectacles through which I see the race and IQ debate Intelligence 38 4 363 366 Jensen 1998 189 197 Mackintosh 2011 134 138 a b Chabris 2007 Reader S M Hager Y Laland K N 2011 The evolution of primate general and cultural intelligence Philosophical Transactions of the Royal Society B Biological Sciences 366 1567 1017 1027 doi 10 1098 rstb 2010 0342 PMC 3049098 PMID 21357224 Locurto C amp Durkin E Problem solving and individual differences in mice Mus musculus using water reinforcement J Comp Psychol Locurto C amp Scanlon C Individual differences and a spatial learning factor in two strains of mice Mus musculus J Comp Psychol 112 344 352 1998 Poirier Marc Antoine Kozlovsky Dovid Y Morand Ferron Julie Careau Vincent 9 December 2020 How general is cognitive ability in non human animals A meta analytical and multi level reanalysis approach Proceedings of the Royal Society B Biological Sciences 287 1940 20201853 doi 10 1098 rspb 2020 1853 PMC 7739923 PMID 33290683 Anderson B 2000 The g factor in non human animals The nature of intelligence 285 79 Woolley Anita Williams Chabris Christopher F Pentland Alex Hashmi Nada Malone Thomas W 29 October 2010 Evidence for a Collective Intelligence Factor in the Performance of Human Groups Science 330 6004 686 688 Bibcode 2010Sci 330 686W doi 10 1126 science 1193147 ISSN 0036 8075 PMID 20929725 S2CID 74579 Woolley Anita Williams Aggarwal Ishani Malone Thomas W 1 December 2015 Collective Intelligence and Group Performance Current Directions in Psychological Science 24 6 420 424 doi 10 1177 0963721415599543 ISSN 0963 7214 S2CID 146673541 Jensen 1998 146 149 150 Jensen 1998 87 88 Hunt Earl B 2010 Human Intelligence Cambridge University Press pp 378 379 ISBN 978 1139495110 Mackintosh 2011 360 373 Nisbett Richard E Aronson Joshua Blair Clancy Dickens William Flynn James Halpern Diane F Turkheimer Eric 2012 Group differences in IQ are best understood as environmental in origin PDF American Psychologist 67 6 503 504 doi 10 1037 a0029772 ISSN 0003 066X PMID 22963427 Retrieved 22 July 2013 Jensen 1998 369 399 Schonemann Peter 1997 Famous artefacts Spearman s hypothesis Current Psychology of Cognition 16 6 665 694 Schonemann Peter H 1 May 1989 Some new results on the Spearman hypothesis artifact Bulletin of the Psychonomic Society 27 5 462 464 doi 10 3758 BF03334656 ISSN 0090 5054 Hunt 2011 421 Lynn 2003 Tucker Drob Elliot M Bates Timothy C February 2016 Large Cross National Differences in Gene x Socioeconomic Status Interaction on Intelligence Psychological Science 27 2 138 149 doi 10 1177 0956797615612727 ISSN 0956 7976 PMC 4749462 PMID 26671911 Kamin Leon J 1 March 2006 African IQ and Mental Retardation South African Journal of Psychology 36 1 1 9 doi 10 1177 008124630603600101 ISSN 0081 2463 S2CID 92984213 Shuttleworth Edwards Ann B Van der Merwe Adele S 2002 WAIS III and WISC IV South African Cross Cultural Normative Data Stratified for Quality of Education In Ferraro F Richard ed Minority and cross cultural aspects of neuropsychological assessment Exton PA Swets amp Zeitlinger pp 72 75 ISBN 9026518307 Case for Non Biased Intelligence Testing Against Black Africans Has Not Been Made A Comment on Rushton Skuy and Bons 2004 1 Leah K Hamilton1 Betty R Onyura1 and Andrew S Winston International Journal of Selection and Assessment Volume 14 Issue 3 Page 278 September 2006 Culture Fair Cognitive Ability Assessment Steven P Verney Assessment Vol 12 No 3 303 319 2005 The attack of the psychometricians Archived 2007 06 08 at the Wayback Machine DENNY BORSBOOM PSYCHOMETRIKA VOL 71 NO 3 425 440 SEPTEMBER 2006 Jensen 1998 213 Ackerman et al 2005 Mackintosh 2011 158 a b Weinberg 1989 Lautrey 2002 Humphreys et al 1985 a b von Stumm et al 2011 Jensen 1998 573 Judge et al 2007 von Stumm et al 2009 Jensen 1998 577 Eysenck 1995 Lubinski 2009 Robertson et al 2010 Helms Janet E June 2012 A Legacy of Eugenics Underlies Racial Group Comparisons in Intelligence Testing Industrial and Organizational Psychology 5 2 176 179 doi 10 1111 j 1754 9434 2012 01426 x ISSN 1754 9426 S2CID 145700200 Graves Joseph L Johnson Amanda 1995 The Pseudoscience of Psychometry and the Bell Curve The Journal of Negro Education 64 3 277 294 doi 10 2307 2967209 JSTOR 2967209 Retrieved 23 October 2022 Wintroub Michael 2020 Sordid genealogies a conjectural history of Cambridge Analytica s eugenic roots Humanities and Social Sciences Communications 7 1 41 doi 10 1057 s41599 020 0505 5 ISSN 2662 9992 S2CID 220611772 Graves Joseph L Johnson Amanda 1995 The Pseudoscience of Psychometry and The Bell Curve The Journal of Negro Education 64 3 277 294 doi 10 2307 2967209 JSTOR 2967209 Blum Jeffrey M 1978 Pseudoscience and Mental Ability The Origins and Fallacies of the IQ Controversy Monthly Review Press 62 West 14th Street New York New York 10011 13 Jensen 1998 122 123 Sternberg et al 1981 Jensen 1998 123 Jensen 1998 124 Jensen 1998 125 Mackintosh 2011 152 153 Jensen 1998 77 78 115 117 Mackintosh 2011 52 239 Jensen 1998 128 132 Deary 2001 15 16 Mackintosh 2011 236 237 Hunt 2011 120 130 Mackintosh 2011 223 235 Flynn 2011 Gould Stephen Jay 1981 The Mismeasure of Man New York NY W W Norton amp Company p 273 OCLC 470800842 Burt Cyril 1972 Inheritance of general intelligence American Psychologist 27 3 188 doi 10 1037 h0033789 ISSN 1935 990X PMID 5009980 Korb 1994 Bundled referencesBibliography editAckerman P L Beier M E Boyle M O 2005 Working memory and intelligence The same or different constructs Psychological Bulletin 131 1 30 60 doi 10 1037 0033 2909 131 1 30 PMID 15631550 S2CID 14087289 Bartholomew D J Deary I J Lawn M 2009 A New Lease of Life for Thomson s Bonds Model of Intelligence PDF Psychological Review 116 3 567 579 doi 10 1037 a0016262 PMID 19618987 Brody N 2006 Geocentric theory A valid alternative to Gardner s theory of intelligence In Schaler J A Ed Howard Gardner under fire The rebel psychologist faces his critics Chicago Open Court Carroll J B 1995 Reflections on Stephen Jay Gould s The Mismeasure of Man 1981 A Retrospective Review Intelligence 21 2 121 134 doi 10 1016 0160 2896 95 90022 5 Carroll J B 1997 Psychometrics Intelligence and Public Perception PDF Intelligence 24 25 52 CiteSeerX 10 1 1 408 9146 doi 10 1016 s0160 2896 97 90012 x Chabris C F 2007 Cognitive and Neurobiological Mechanisms of the Law of General Intelligence In Roberts M J Ed Integrating the mind Domain general versus domain specific processes in higher cognition Hove UK Psychology Press Chabris C F Hebert B M Benjamin D J Beauchamp J P Cesarini D van der Loos M J H M Johannesson M Magnusson P K E Lichtenstein P Atwood C S Freese J Hauser T S Hauser R M Christakis N A amp Laibson D 2012 Most Reported Genetic Associations with General Intelligence Are Probably False Positives PDF Psychological Science 23 11 1314 1323 doi 10 1177 0956797611435528 PMC 3498585 PMID 23012269 Archived from the original PDF on 21 October 2012 Retrieved 28 September 2012 Davidson J E amp Kemp I A 2011 Contemporary models of intelligence In R J Sternberg amp S B Kaufman Eds The Cambridge Handbook of Intelligence New York NY Cambridge University Press Deary I J 2012 Intelligence PDF Annual Review of Psychology 63 453 482 doi 10 1146 annurev psych 120710 100353 PMID 21943169 Archived PDF from the original on 25 February 2021 Retrieved 25 February 2021 Deary I J 2001 Intelligence A Very Short Introduction Oxford Oxford University Press doi 10 1093 actrade 9780192893215 001 0001 Deary I J 2000 Looking Down on Human Intelligence From Psychometrics to the Brain Oxford England Oxford University Press doi 10 1093 acprof oso 9780198524175 001 0001 Deary I J Pagliari C 1991 The strength of g at different levels of ability Have Detterman and Daniel rediscovered Spearman s law of diminishing returns Intelligence 15 2 247 250 doi 10 1016 0160 2896 91 90033 A Deary I J Egan V Gibson G J Brand C R Austin E Kellaghan T 1996 Intelligence and the differentiation hypothesis Intelligence 23 2 105 132 doi 10 1016 S0160 2896 96 90008 2 Deary I J Spinath F M Bates T C 2006 Genetics of intelligence Eur J Hum Genet 14 6 690 700 doi 10 1038 sj ejhg 5201588 PMID 16721405 Deary I J Penke L Johnson W 2010 The neuroscience of human intelligence differences PDF Nature Reviews Neuroscience 11 3 201 211 doi 10 1038 nrn2793 hdl 20 500 11820 9b11fac3 47d0 424c 9d1c fe6f9ff2ecac PMID 20145623 S2CID 5136934 Detterman D K Daniel M H 1989 Correlations of mental tests with each other and with cognitive variables are highest for low IQ groups Intelligence 13 4 349 359 doi 10 1016 S0160 2896 89 80007 8 Eysenck H J 1995 Creativity as a product of intelligence and personality In Saklofske D H amp Zeidner M Eds International Handbook of Personality and Intelligence pp 231 247 New York NY US Plenum Press Floyd R G Shands E I Rafael F A Bergeron R McGrew K S 2009 The dependability of general factor loadings The effects of factor extraction methods test battery composition test battery size and their interactions PDF Intelligence 37 5 453 465 doi 10 1016 j intell 2009 05 003 Flynn J 2011 Secular changes in intelligence Pages 647 665 in R J Sternberg amp S B Kaufman eds Cambridge Handbook of Intelligence New York NY Cambridge University Press Frey M C Detterman D K 2004 Scholastic Assessment or g The Relationship Between the Scholastic Assessment Test and General Cognitive Ability PDF Psychological Science 15 6 373 378 doi 10 1111 j 0956 7976 2004 00687 x PMID 15147489 S2CID 12724085 Gottfredson L S 1998 Winter The general intelligence factor Scientific American Presents 9 4 24 29 Gottfredson L S 2002 g Highly general and highly practical Pages 331 380 in R J Sternberg amp E L Grigorenko Eds The general factor of intelligence How general is it Mahwah NJ Erlbaum Gottfredson L S 2007 Innovation fatal accidents and the evolution of general intelligence In M J Roberts Ed Integrating the mind Domain general versus domain specific processes in higher cognition pp 387 425 Hove UK Psychology Press Gottfredson L S 2011 Intelligence and social inequality Why the biological link pp 538 575 in T Chamorro Premuzic A Furhnam amp S von Stumm Eds Handbook of Individual Differences Wiley Blackwell Gould S J 1996 Revised Edition The Mismeasure of Man New York W W Norton amp Company Haworth C M A et al 2010 The heritability of general cognitive ability increases linearly from childhood to young adulthood Mol Psychiatry 15 11 1112 1120 doi 10 1038 mp 2009 55 PMC 2889158 PMID 19488046 Horn J L amp McArdle J J 2007 Understanding human intelligence since Spearman In R Cudeck amp R MacCallum Eds Factor Analysis at 100 years pp 205 247 Mahwah NJ Lawrence Erlbaum Associates Inc Humphreys L G Rich S A Davey T C 1985 A Piagetian Test of General Intelligence Developmental Psychology 21 5 872 877 doi 10 1037 0012 1649 21 5 872 Hunt E B 2011 Human Intelligence Cambridge UK Cambridge University Press Jensen A R 1980 Bias in Mental Testing New York The Free Press Jensen A R 1982 The Debunking of Scientific Fossils and Straw Persons Contemporary Education Review 1 121 135 Jensen A R 1992 Understanding g in terms of information processing Educational Psychology Review 4 3 271 308 doi 10 1007 bf01417874 S2CID 54739564 Jensen A R 1998 The G Factor The Science of Mental Ability Human evolution behavior and intelligence Praeger ISBN 978 0 275 96103 9 Retrieved 10 July 2021 Jensen A R 2000 A Nihilistic Philosophy of Science for a Scientific Psychology Psycoloquy 11 Issue 088 Article 49 Jensen A R 2002 Psychometric g Definition and substantiation In R J Sternberg amp E L Grigorenko Eds General factor of intelligence How general is it pp 39 54 Mahwah NJ Erlbaum Johnson W Bouchard T J Krueger R F McGue M Gottesman I I 2004 Just one g Consistent results from three test batteries Intelligence 32 95 107 doi 10 1016 S0160 2896 03 00062 X Johnson W te Nijenhuis J Bouchard Jr T 2008 Still just 1 g Consistent results from five test batteries Intelligence 36 81 95 doi 10 1016 j intell 2007 06 001 Judge T A Jackson C L Shaw J C Scott B A Rich B L 2007 Self efficacy and work related performance The integral role of individual differences Journal of Applied Psychology 92 1 107 127 doi 10 1037 0021 9010 92 1 107 PMID 17227155 S2CID 333238 Kamphaus R W Winsor A P Rowe E W amp Kim S 2005 A history of intelligence test interpretation In D P Flanagan and P L Harrison Eds Contemporary intellectual assessment Theories tests and issues 2nd Ed pp 23 38 New York Guilford Kane M J Hambrick D Z Conway A R A 2005 Working memory capacity and fluid intelligence are strongly related constructs Comment on Ackerman Beier and Boyle 2004 PDF Psychological Bulletin 131 1 66 71 doi 10 1037 0033 2909 131 1 66 PMID 15631552 Keith T Z Kranzler J H Flanagan D P 2001 What does the Cognitive Assessment System CAS measure Joint confirmatory factor analysis of the CAS and the Woodcock Johnson Tests of Cognitive Ability 3rd Edition School Psychology Review 30 89 119 doi 10 1080 02796015 2001 12086102 S2CID 141437006 Korb K B 1994 Stephen Jay Gould on intelligence Cognition 52 2 111 123 CiteSeerX 10 1 1 22 9513 doi 10 1016 0010 0277 94 90064 7 PMID 7924200 S2CID 10514854 Kovas Y Plomin R 2006 Generalist genes implications for the cognitive sciences Trends in Cognitive Sciences 10 5 198 203 doi 10 1016 j tics 2006 03 001 PMID 16580870 S2CID 13943225 Kvist A amp Gustafsson J E 2008 The relation between fluid intelligence and the general factor as a function of cultural background A test of Cattell s Investment theory Intelligence 36 422 436 Lautrey J 2002 Is there a general factor of cognitive development In Sternberg R J amp Grigorenko E L Eds The general factor of intelligence How general is it Mahwah NJ Erlbaum Lubinski D 2009 Exceptional Cognitive Ability The Phenotype Behavior Genetics 39 4 350 358 doi 10 1007 s10519 009 9273 0 PMID 19424784 S2CID 7900602 Lynn R 2003 The Geography of Intelligence In Nyborg H ed The Scientific Study of General Intelligence Tribute to Arthur R Jensen pp 126 146 Oxford Pergamon Mackintosh N J 2011 IQ and Human Intelligence Oxford UK Oxford University Press McGrew K S 2005 The Cattell Horn Carroll Theory of Cognitive Abilities Past Present and Future Contemporary Intellectual Assessment Theories Tests and Issues pp 136 181 New York NY US Guilford Press Flanagan Dawn P Ed Harrison Patti L Ed 2005 xvii 667 pp Neisser U Boodoo G Bouchard Jr T J Boykin A W Brody N Ceci S J Halpern D F Loehlin J C Perloff R 1996 Intelligence Knowns and Unknowns American Psychologist 51 2 77 101 CiteSeerX 10 1 1 322 5525 doi 10 1037 0003 066x 51 2 77 Oberauer K Schulze R Wilhelm O Suss H M 2005 Working memory and intelligence their correlation and their relation A comment on Ackerman Beier and Boyle 2005 Psychological Bulletin 131 1 61 65 doi 10 1037 0033 2909 131 1 61 PMID 15631551 S2CID 2508020 Penke L Denissen J J A Miller G F 2007 The Evolutionary Genetics of Personality PDF European Journal of Personality 21 5 549 587 doi 10 1002 per 629 S2CID 13403823 Plomin R 2003 Genetics genes genomics and g Molecular Psychiatry 8 1 1 5 doi 10 1038 sj mp 4001249 PMID 12556898 Plomin R Spinath F M 2004 Intelligence genetics genes and genomics J Pers Soc Psychol 86 1 112 129 doi 10 1037 0022 3514 86 1 112 PMID 14717631 S2CID 5734393 Robertson K F Smeets S Lubinski D Benbow C P 2010 Beyond the Threshold Hypothesis Even Among the Gifted and Top Math Science Graduate Students Cognitive Abilities Vocational Interests and Lifestyle Preferences Matter for Career Choice Performance and Persistence Current Directions in Psychological Science 19 6 346 351 doi 10 1177 0963721410391442 S2CID 46218795 Roth P L Bevier C A Bobko P Switzer III F S Tyler P 2001 Ethnic group differences in cognitive ability in employment and educational settings A meta analysis Personnel Psychology 54 2 297 330 CiteSeerX 10 1 1 372 6092 doi 10 1111 j 1744 6570 2001 tb00094 x Rushton J P Jensen A R 2010 The rise and fall of the Flynn Effect as a reason to expect a narrowing of the Black White IQ gap Intelligence 38 2 213 219 doi 10 1016 j intell 2009 12 002 Sackett P R Borneman M J Connelly B S 2008 High Stakes Testing in Higher Education and Employment Appraising the Evidence for Validity and Fairness American Psychologist 63 4 215 227 CiteSeerX 10 1 1 189 2163 doi 10 1037 0003 066x 63 4 215 PMID 18473607 Schmidt F L Hunter J 2004 General Mental Ability in the World of Work Occupational Attainment and Job Performance PDF Journal of Personality and Social Psychology 86 1 162 173 CiteSeerX 10 1 1 394 8878 doi 10 1037 0022 3514 86 1 162 PMID 14717634 Spearman C E 1904 General intelligence Objectively Determined And Measured PDF American Journal of Psychology 15 2 201 293 doi 10 2307 1412107 JSTOR 1412107 Archived from the original PDF on 7 April 2014 Spearman C E 1927 The Abilities of Man London Macmillan Stauffer J Ree M J Carretta T R 1996 Cognitive Components Tests Are Not Much More than g An Extension of Kyllonen s Analyses The Journal of General Psychology 123 3 193 205 doi 10 1080 00221309 1996 9921272 Sternberg R J Conway B E Ketron J L Bernstein M 1981 People s conception of intelligence Journal of Personality and Social Psychology 41 37 55 doi 10 1037 0022 3514 41 1 37 von Stumm S Chamorro Premuzic T Quiroga M A Colom R 2009 Separating narrow and general variances in intelligence personality associations Personality and Individual Differences 47 4 336 341 doi 10 1016 j paid 2009 03 024 von Stumm S Chamorro Premuzic T Ackerman P L 2011 Re visiting intelligence personality associations Vindicating intellectual investment In T Chamorro Premuzic S von Stumm amp A Furnham eds Handbook of Individual Differences Chichester UK Wiley Blackwell Tucker Drob E M 2009 Differentiation of cognitive abilities across the life span Developmental Psychology 45 4 1097 1118 doi 10 1037 a0015864 PMC 2855504 PMID 19586182 van der Maas H L J Dolan C V Grasman R P P P Wicherts J M Huizenga H M Raaijmakers M E J 2006 A dynamical model of general intelligence The positive manifold of intelligence by mutualism PDF Psychological Review 13 4 842 860 doi 10 1037 0033 295x 113 4 842 PMID 17014305 Archived from the original PDF on 17 April 2012 Retrieved 1 August 2012 Weinberg R A 1989 Intelligence and IQ Landmark Issues and Great Debates American Psychologist 44 2 98 104 doi 10 1037 0003 066X 44 2 98 Retrieved from https en wikipedia org w index php title G factor psychometrics amp oldid 1194311629, wikipedia, wiki, book, books, library,

article

, read, download, free, free download, mp3, video, mp4, 3gp, jpg, jpeg, gif, png, picture, music, song, movie, book, game, games.