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Correlation does not imply causation

The phrase "correlation does not imply causation" refers to the inability to legitimately deduce a cause-and-effect relationship between two events or variables solely on the basis of an observed association or correlation between them.[1][2] The idea that "correlation implies causation" is an example of a questionable-cause logical fallacy, in which two events occurring together are taken to have established a cause-and-effect relationship. This fallacy is also known by the Latin phrase cum hoc ergo propter hoc ('with this, therefore because of this'). This differs from the fallacy known as post hoc ergo propter hoc ("after this, therefore because of this"), in which an event following another is seen as a necessary consequence of the former event, and from conflation, the errant merging of two events, ideas, databases, etc., into one.

As with any logical fallacy, identifying that the reasoning behind an argument is flawed does not necessarily imply that the resulting conclusion is false. Statistical methods have been proposed that use correlation as the basis for hypothesis tests for causality, including the Granger causality test and convergent cross mapping. The Bradford Hill criteria, also known as Hill's criteria for causation, are a group of nine principles that can be useful in establishing epidemiologic evidence of a causal relationship.

Usage and meaning of terms edit

"Imply" edit

In casual use, the word "implies" loosely means suggests, rather than requires. However, in logic, the technical use of the word "implies" means "is a sufficient condition for."[3] That is the meaning intended by statisticians when they say causation is not certain. Indeed, p implies q has the technical meaning of the material conditional: if p then q symbolized as p → q. That is, "if circumstance p is true, then q follows." In that sense, it is always correct to say "Correlation does not imply causation."

"Cause" edit

The word "cause" (or "causation") has multiple meanings in English. In philosophical terminology, "cause" can refer to necessary, sufficient, or contributing causes. In examining correlation, "cause" is most often used to mean "one contributing cause" (but not necessarily the only contributing cause).

 
Dinosaur illiteracy and extinction may be correlated, but that would not mean the variables had a causal relationship.

Causal analysis edit

Causal analysis is the field of experimental design and statistics pertaining to establishing cause and effect.[4] Typically it involves establishing four elements: correlation, sequence in time (that is, causes must occur before their proposed effect), a plausible physical or information-theoretical mechanism for an observed effect to follow from a possible cause, and eliminating the possibility of common and alternative ("special") causes. Such analysis usually involves one or more artificial or natural experiments.[5]

Examples of illogically inferring causation from correlation edit

B causes A (reverse causation or reverse causality) edit

Reverse causation or reverse causality or wrong direction is an informal fallacy of questionable cause where cause and effect are reversed. The cause is said to be the effect and vice versa.

Example 1
The faster that windmills are observed to rotate, the more wind is observed.
Therefore, wind is caused by the rotation of windmills. (Or, simply put: windmills, as their name indicates, are machines used to produce wind.)

In this example, the correlation (simultaneity) between windmill activity and wind velocity does not imply that wind is caused by windmills. It is rather the other way around, as suggested by the fact that wind does not need windmills to exist, while windmills need wind to rotate. Wind can be observed in places where there are no windmills or non-rotating windmills—and there are good reasons to believe that wind existed before the invention of windmills.

Example 2
Subjects with low cholesterol correlate with an increase in mortality.
Therefore, low cholesterol increases your risk of mortality.

It is the other way around since the disease, such as cancer, causes a low cholesterol because of a myriad of factors, such as weight loss, and an increase in mortality.[6] This is also seen with ex-smokers. Ex-smokers are more likely to die of lung cancer than current smokers.[7] When lifelong smokers are told they have lung cancer, many quit smoking. This change can make it seem as if ex-smokers are more likely to die of lung cancer than current smokers. This can also be seen in alcoholics. As alcoholics become diagnosed with cirrhosis of the liver, many quit drinking. However, they also experience an increased risk of mortality. In these instances, it is the diseases that cause an increased risk of mortality, but the increased mortality is attributed to the beneficial effects that follow the diagnosis, making healthy changes look unhealthy.

Example 3

In other cases it may simply be unclear which is the cause and which is the effect. For example:

Children that watch a lot of TV are the most violent. Clearly, TV makes children more violent.

This could easily be the other way round; that is, violent children like watching more TV than less violent ones.

Example 4

A correlation between recreational drug use and psychiatric disorders might be either way around: perhaps the drugs cause the disorders, or perhaps people use drugs to self medicate for preexisting conditions. Gateway drug theory may argue that marijuana usage leads to usage of harder drugs, but hard drug usage may lead to marijuana usage (see also confusion of the inverse). Indeed, in the social sciences where controlled experiments often cannot be used to discern the direction of causation, this fallacy can fuel long-standing scientific arguments. One such example can be found in education economics, between the screening/signaling and human capital models: it could either be that having innate ability enables one to complete an education, or that completing an education builds one's ability.

Example 5

A historical example of this is that Europeans in the Middle Ages believed that lice were beneficial to health since there would rarely be any lice on sick people. The reasoning was that the people got sick because the lice left. The real reason however is that lice are extremely sensitive to body temperature. A small increase of body temperature, such as in a fever, makes the lice look for another host. The medical thermometer had not yet been invented and so that increase in temperature was rarely noticed. Noticeable symptoms came later, which gave the impression that the lice had left before the person became sick.[8]

In other cases, two phenomena can each be a partial cause of the other; consider poverty and lack of education, or procrastination and poor self-esteem. One making an argument based on these two phenomena must however be careful to avoid the fallacy of circular cause and consequence. Poverty is a cause of lack of education, but it is not the sole cause, and vice versa.

Third factor C (the common-causal variable) causes both A and B edit

The third-cause fallacy (also known as ignoring a common cause[9] or questionable cause[9]) is a logical fallacy in which a spurious relationship is confused for causation. It asserts that X causes Y when in reality, both X and Y are caused by Z. It is a variation on the post hoc ergo propter hoc fallacy and a member of the questionable cause group of fallacies.

All of those examples deal with a lurking variable, which is simply a hidden third variable that affects both causes of the correlation. A difficulty often also arises where the third factor, though fundamentally different from A and B, is so closely related to A and/or B as to be confused with them or very difficult to scientifically disentangle from them (see Example 4).

Example 1
Sleeping with one's shoes on is strongly correlated with waking up with a headache.
Therefore, sleeping with one's shoes on causes headache.

The above example commits the correlation-implies-causation fallacy, as it prematurely concludes that sleeping with one's shoes on causes headache. A more plausible explanation is that both are caused by a third factor, in this case going to bed drunk, which thereby gives rise to a correlation. So the conclusion is false.

Example 2
Young children who sleep with the light on are much more likely to develop myopia in later life.
Therefore, sleeping with the light on causes myopia.

This is a scientific example that resulted from a study at the University of Pennsylvania Medical Center. Published in the May 13, 1999, issue of Nature,[10] the study received much coverage at the time in the popular press.[11] However, a later study at Ohio State University did not find that infants sleeping with the light on caused the development of myopia. It did find a strong link between parental myopia and the development of child myopia, also noting that myopic parents were more likely to leave a light on in their children's bedroom.[12][13][14][15] In this case, the cause of both conditions is parental myopia, and the above-stated conclusion is false.

Example 3
As ice cream sales increase, the rate of drowning deaths increases sharply.
Therefore, ice cream consumption causes drowning.

This example fails to recognize the importance of time of year and temperature to ice cream sales. Ice cream is sold during the hot summer months at a much greater rate than during colder times, and it is during these hot summer months that people are more likely to engage in activities involving water, such as swimming. The increased drowning deaths are simply caused by more exposure to water-based activities, not ice cream. The stated conclusion is false.

Example 4
A hypothetical study shows a relationship between test anxiety scores and shyness scores, with a statistical r value (strength of correlation) of +.59.[16]
Therefore, it may be simply concluded that shyness, in some part, causally influences test anxiety.

However, as encountered in many psychological studies, another variable, a "self-consciousness score", is discovered that has a sharper correlation (+.73) with shyness. This suggests a possible "third variable" problem, however, when three such closely related measures are found, it further suggests that each may have bidirectional tendencies (see "bidirectional variable", above), being a cluster of correlated values each influencing one another to some extent. Therefore, the simple conclusion above may be false.

Example 5
Since the 1950s, both the atmospheric CO2 level and obesity levels have increased sharply.
Hence, atmospheric CO2 causes obesity.

Richer populations tend to eat more food and produce more CO2.

Example 6
HDL ("good") cholesterol is negatively correlated with incidence of heart attack.
Therefore, taking medication to raise HDL decreases the chance of having a heart attack.

Further research[17] has called this conclusion into question. Instead, it may be that other underlying factors, like genes, diet and exercise, affect both HDL levels and the likelihood of having a heart attack; it is possible that medicines may affect the directly measurable factor, HDL levels, without affecting the chance of heart attack.

Bidirectional causation: A causes B, and B causes A edit

Causality is not necessarily one-way;[dubious ] in a predator-prey relationship, predator numbers affect prey numbers, but prey numbers, i.e. food supply, also affect predator numbers. Another well-known example is that cyclists have a lower Body Mass Index than people who do not cycle. This is often explained by assuming that cycling increases physical activity levels and therefore decreases BMI. Because results from prospective studies on people who increase their bicycle use show a smaller effect on BMI than cross-sectional studies, there may be some reverse causality as well. For example, people with a lower BMI may be more likely to want to cycle in the first place. [18]

The relationship between A and B is coincidental edit

The two variables are not related at all, but correlate by chance. The more things are examined, the more likely it is that two unrelated variables will appear to be related. For example:

Use of correlation as scientific evidence edit

Much of scientific evidence is based upon a correlation of variables[19] that are observed to occur together. Scientists are careful to point out that correlation does not necessarily mean causation. The assumption that A causes B simply because A correlates with B is often not accepted as a legitimate form of argument.

However, sometimes people commit the opposite fallacy of dismissing correlation entirely. That would dismiss a large swath of important scientific evidence.[19] Since it may be difficult or ethically impossible to run controlled double-blind studies, correlational evidence from several different angles may be useful for prediction despite failing to provide evidence for causation. For example, social workers might be interested in knowing how child abuse relates to academic performance. Although it would be unethical to perform an experiment in which children are randomly assigned to receive or not receive abuse, researchers can look at existing groups using a non-experimental correlational design. If in fact a negative correlation exists between abuse and academic performance, researchers could potentially use this knowledge of a statistical correlation to make predictions about children outside the study who experience abuse even though the study failed to provide causal evidence that abuse decreases academic performance.[20] The combination of limited available methodologies with the dismissing correlation fallacy has on occasion been used to counter a scientific finding. For example, the tobacco industry has historically relied on a dismissal of correlational evidence to reject a link between tobacco smoke and lung cancer,[21] as did biologist and statistician Ronald Fisher (frequently on the industry's behalf).[list 1]

Correlation is a valuable type of scientific evidence in fields such as medicine, psychology, and sociology. Correlations must first be confirmed as real, and every possible causative relationship must then be systematically explored. In the end, correlation alone cannot be used as evidence for a cause-and-effect relationship between a treatment and benefit, a risk factor and a disease, or a social or economic factor and various outcomes. It is one of the most abused types of evidence because it is easy and even tempting to come to premature conclusions based upon the preliminary appearance of a correlation.[21]

See also edit

References edit

  1. ^ Tufte 2006, p. 5
  2. ^ Aldrich, John (1995). "Correlations Genuine and Spurious in Pearson and Yule" (PDF). Statistical Science. 10 (4): 364–376. doi:10.1214/ss/1177009870. JSTOR 2246135.
  3. ^ "Sufficient". Wolfram. 2019-12-02. Retrieved 2019-12-03.
  4. ^ Rohlfing, Ingo; Schneider, Carsten Q. (2018). "A Unifying Framework for Causal Analysis in Set-Theoretic Multimethod Research" (PDF). Sociological Methods & Research. 47 (1): 37–63. doi:10.1177/0049124115626170. S2CID 124804330. Retrieved 29 February 2020.
  5. ^ Brady, Henry E. (7 July 2011). "Causation and Explanation in Social Science". The Oxford Handbook of Political Science. doi:10.1093/oxfordhb/9780199604456.013.0049. Retrieved 29 February 2020.
  6. ^ Naveed Sattar; David Preiss (13 Jun 2017). "Reverse Causality in Cardiovascular Epidemiological Research". Circulation. 135 (24): 2369–2372. doi:10.1161/CIRCULATIONAHA.117.028307. PMID 28606949.
  7. ^ Richard Doll; Richard Peto; Jillian Boreham; Isabelle Sutherland (24 Jun 2004). "Mortality in relation to smoking: 50 years' observations on male British doctors". The BMJ. 328 (7455): 1239–49. doi:10.1136/bmj.38142.554479.AE. PMC 437139. PMID 15213107.
  8. ^ Willingham, Emily. "Of lice and men: An itchy history". Scientific American Blog Network. Retrieved 2019-02-26.
  9. ^ a b Labossiere, M.C., Dr. LaBossiere's Philosophy Pages 2009-05-22 at the Wayback Machine
  10. ^ Quinn, Graham E.; Shin, Chai H.; Maguire, Maureen G.; Stone, Richard A. (May 1999). "Myopia and ambient lighting at night". Nature. 399 (6732): 113–114. Bibcode:1999Natur.399..113Q. doi:10.1038/20094. PMID 10335839. S2CID 4419645.
  11. ^ CNN, May 13, 1999. Night-light may lead to nearsightedness
  12. ^ Ohio State University Research News, March 9, 2000. Night lights don't lead to nearsightedness, study suggests 2006-09-01 at the Wayback Machine
  13. ^ Zadnik, Karla; Jones, Lisa A.; Irvin, Brett C.; Kleinstein, Robert N.; Manny, Ruth E.; Shin, Julie A.; Mutti, Donald O. (2000). "Vision: Myopia and ambient night-time lighting". Nature. 404 (6774): 143–144. Bibcode:2000Natur.404..143Z. doi:10.1038/35004661. PMID 10724157. S2CID 4399332.
  14. ^ Gwiazda, J.; Ong, E.; Held, R.; Thorn, F. (2000). "Vision: Myopia and ambient night-time lighting". Nature. 404 (6774): 144. Bibcode:2000Natur.404..144G. doi:10.1038/35004663. PMID 10724158.
  15. ^ Stone, Richard A.; Maguire, Maureen G.; Quinn, Graham E. (2000). "Vision: reply: Myopia and ambient night-time lighting". Nature. 404 (6774): 144. Bibcode:2000Natur.404..144S. doi:10.1038/35004665. PMID 10724158.
  16. ^ Carducci, Bernardo J. (2009). The Psychology of Personality: Viewpoints, Research, and Applications (2nd ed.). John Wiley & Sons. ISBN 978-1-4051-3635-8.
  17. ^ Ornish, Dean. "Cholesterol: The good, the bad, and the truth" [1] (retrieved 3 June 2011)
  18. ^ Dons, E (2018). "Transport mode choice and body mass index: Cross-sectional and longitudinal evidence from a European-wide study" (PDF). Environment International. 119 (119): 109–116. doi:10.1016/j.envint.2018.06.023. hdl:10044/1/61061. PMID 29957352. S2CID 49607716.
  19. ^ a b Novella (18 November 2009). "Evidence in Medicine: Correlation and Causation". Science and Medicine. Science-Based Medicine.
  20. ^ Nielsen, Michael (2012-01-23). "If correlation doesn't imply causation, then what does? | DDI". Michaelnielsen.org. Retrieved 2017-10-08.
  21. ^ a b "Evidence in Medicine: Correlation and Causation – Science-Based Medicine". Sciencebasedmedicine.org. 2009-11-18. Retrieved 2017-10-08.
  22. ^ Silver, Nate (2015), The Signal and the Noise: Why So Many Predictions Fail – But Some Don't (2nd ed.), New York: Penguin Books, pp. 254–255
  23. ^ Fisher, Ronald (July 6, 1957), "Dangers Of Cigarette-Smoking", The British Medical Journal, 2 (5035), London: British Medical Association: 43, doi:10.1136/bmj.2.5035.43, JSTOR 25383068, PMC 1961750
  24. ^ Fisher, Ronald (August 3, 1957), "Dangers Of Cigarette-Smoking", The British Medical Journal, 2 (5039), London: British Medical Association: 297–298, doi:10.1136/bmj.2.5039.297-b, JSTOR 25383439, PMC 1961712
  25. ^ Fisher, Ronald (1958), "Cigarettes, Cancer, and Statistics" (PDF), The Centennial Review of Arts & Science, 2, East Lansing, Michigan: Michigan State University Press: 151–166, archived (PDF) from the original on 2022-10-09
  26. ^ Fisher, Ronald (1958), "The Nature of Probability" (PDF), The Centennial Review of Arts & Science, 2, East Lansing, Michigan: Michigan State University Press: 261–274, archived (PDF) from the original on 2022-10-09
  27. ^ Fisher, Ronald (July 12, 1958), "Lung Cancer and Cigarettes" (PDF), Nature, 182 (4628), London: Nature Publishing Group: 108, Bibcode:1958Natur.182..108F, doi:10.1038/182108a0, PMID 13566198, archived (PDF) from the original on 2022-10-09
  28. ^ Fisher, Ronald (August 30, 1958), "Cancer and Smoking" (PDF), Nature, 182 (4635), London: Nature Publishing Group: 596, Bibcode:1958Natur.182..596F, doi:10.1038/182596a0, PMID 13577916, archived (PDF) from the original on 2022-10-09
Bundled references

Bibliography edit

correlation, does, imply, causation, confused, with, illusory, correlation, conflation, phrase, correlation, does, imply, causation, refers, inability, legitimately, deduce, cause, effect, relationship, between, events, variables, solely, basis, observed, asso. Not to be confused with Illusory correlation or Conflation The phrase correlation does not imply causation refers to the inability to legitimately deduce a cause and effect relationship between two events or variables solely on the basis of an observed association or correlation between them 1 2 The idea that correlation implies causation is an example of a questionable cause logical fallacy in which two events occurring together are taken to have established a cause and effect relationship This fallacy is also known by the Latin phrase cum hoc ergo propter hoc with this therefore because of this This differs from the fallacy known as post hoc ergo propter hoc after this therefore because of this in which an event following another is seen as a necessary consequence of the former event and from conflation the errant merging of two events ideas databases etc into one As with any logical fallacy identifying that the reasoning behind an argument is flawed does not necessarily imply that the resulting conclusion is false Statistical methods have been proposed that use correlation as the basis for hypothesis tests for causality including the Granger causality test and convergent cross mapping The Bradford Hill criteria also known as Hill s criteria for causation are a group of nine principles that can be useful in establishing epidemiologic evidence of a causal relationship Contents 1 Usage and meaning of terms 1 1 Imply 1 2 Cause 2 Causal analysis 3 Examples of illogically inferring causation from correlation 3 1 B causes A reverse causation or reverse causality 3 2 Third factor C the common causal variable causes both A and B 3 3 Bidirectional causation A causes B and B causes A 3 4 The relationship between A and B is coincidental 4 Use of correlation as scientific evidence 5 See also 6 References 6 1 BibliographyUsage and meaning of terms edit Imply edit In casual use the word implies loosely means suggests rather than requires However in logic the technical use of the word implies means is a sufficient condition for 3 That is the meaning intended by statisticians when they say causation is not certain Indeed p implies q has the technical meaning of the material conditional if p then q symbolized as p q That is if circumstance p is true then q follows In that sense it is always correct to say Correlation does not imply causation Cause edit The word cause or causation has multiple meanings in English In philosophical terminology cause can refer to necessary sufficient or contributing causes In examining correlation cause is most often used to mean one contributing cause but not necessarily the only contributing cause nbsp Dinosaur illiteracy and extinction may be correlated but that would not mean the variables had a causal relationship Causal analysis editThis section is an excerpt from Causal analysis edit Causal analysis is the field of experimental design and statistics pertaining to establishing cause and effect 4 Typically it involves establishing four elements correlation sequence in time that is causes must occur before their proposed effect a plausible physical or information theoretical mechanism for an observed effect to follow from a possible cause and eliminating the possibility of common and alternative special causes Such analysis usually involves one or more artificial or natural experiments 5 Examples of illogically inferring causation from correlation editB causes A reverse causation or reverse causality edit Reverse causation or reverse causality or wrong direction is an informal fallacy of questionable cause where cause and effect are reversed The cause is said to be the effect and vice versa Example 1 The faster that windmills are observed to rotate the more wind is observed Therefore wind is caused by the rotation of windmills Or simply put windmills as their name indicates are machines used to produce wind In this example the correlation simultaneity between windmill activity and wind velocity does not imply that wind is caused by windmills It is rather the other way around as suggested by the fact that wind does not need windmills to exist while windmills need wind to rotate Wind can be observed in places where there are no windmills or non rotating windmills and there are good reasons to believe that wind existed before the invention of windmills Example 2 Subjects with low cholesterol correlate with an increase in mortality Therefore low cholesterol increases your risk of mortality It is the other way around since the disease such as cancer causes a low cholesterol because of a myriad of factors such as weight loss and an increase in mortality 6 This is also seen with ex smokers Ex smokers are more likely to die of lung cancer than current smokers 7 When lifelong smokers are told they have lung cancer many quit smoking This change can make it seem as if ex smokers are more likely to die of lung cancer than current smokers This can also be seen in alcoholics As alcoholics become diagnosed with cirrhosis of the liver many quit drinking However they also experience an increased risk of mortality In these instances it is the diseases that cause an increased risk of mortality but the increased mortality is attributed to the beneficial effects that follow the diagnosis making healthy changes look unhealthy Example 3In other cases it may simply be unclear which is the cause and which is the effect For example Children that watch a lot of TV are the most violent Clearly TV makes children more violent This could easily be the other way round that is violent children like watching more TV than less violent ones Example 4A correlation between recreational drug use and psychiatric disorders might be either way around perhaps the drugs cause the disorders or perhaps people use drugs to self medicate for preexisting conditions Gateway drug theory may argue that marijuana usage leads to usage of harder drugs but hard drug usage may lead to marijuana usage see also confusion of the inverse Indeed in the social sciences where controlled experiments often cannot be used to discern the direction of causation this fallacy can fuel long standing scientific arguments One such example can be found in education economics between the screening signaling and human capital models it could either be that having innate ability enables one to complete an education or that completing an education builds one s ability Example 5A historical example of this is that Europeans in the Middle Ages believed that lice were beneficial to health since there would rarely be any lice on sick people The reasoning was that the people got sick because the lice left The real reason however is that lice are extremely sensitive to body temperature A small increase of body temperature such as in a fever makes the lice look for another host The medical thermometer had not yet been invented and so that increase in temperature was rarely noticed Noticeable symptoms came later which gave the impression that the lice had left before the person became sick 8 In other cases two phenomena can each be a partial cause of the other consider poverty and lack of education or procrastination and poor self esteem One making an argument based on these two phenomena must however be careful to avoid the fallacy of circular cause and consequence Poverty is a cause of lack of education but it is not the sole cause and vice versa Third factor C the common causal variable causes both A and B edit Main article Spurious relationship The third cause fallacy also known as ignoring a common cause 9 or questionable cause 9 is a logical fallacy in which a spurious relationship is confused for causation It asserts that X causes Y when in reality both X and Y are caused by Z It is a variation on the post hoc ergo propter hoc fallacy and a member of the questionable cause group of fallacies All of those examples deal with a lurking variable which is simply a hidden third variable that affects both causes of the correlation A difficulty often also arises where the third factor though fundamentally different from A and B is so closely related to A and or B as to be confused with them or very difficult to scientifically disentangle from them see Example 4 Example 1 Sleeping with one s shoes on is strongly correlated with waking up with a headache Therefore sleeping with one s shoes on causes headache The above example commits the correlation implies causation fallacy as it prematurely concludes that sleeping with one s shoes on causes headache A more plausible explanation is that both are caused by a third factor in this case going to bed drunk which thereby gives rise to a correlation So the conclusion is false Example 2 Young children who sleep with the light on are much more likely to develop myopia in later life Therefore sleeping with the light on causes myopia This is a scientific example that resulted from a study at the University of Pennsylvania Medical Center Published in the May 13 1999 issue of Nature 10 the study received much coverage at the time in the popular press 11 However a later study at Ohio State University did not find that infants sleeping with the light on caused the development of myopia It did find a strong link between parental myopia and the development of child myopia also noting that myopic parents were more likely to leave a light on in their children s bedroom 12 13 14 15 In this case the cause of both conditions is parental myopia and the above stated conclusion is false Example 3 As ice cream sales increase the rate of drowning deaths increases sharply Therefore ice cream consumption causes drowning This example fails to recognize the importance of time of year and temperature to ice cream sales Ice cream is sold during the hot summer months at a much greater rate than during colder times and it is during these hot summer months that people are more likely to engage in activities involving water such as swimming The increased drowning deaths are simply caused by more exposure to water based activities not ice cream The stated conclusion is false Example 4 A hypothetical study shows a relationship between test anxiety scores and shyness scores with a statistical r value strength of correlation of 59 16 Therefore it may be simply concluded that shyness in some part causally influences test anxiety However as encountered in many psychological studies another variable a self consciousness score is discovered that has a sharper correlation 73 with shyness This suggests a possible third variable problem however when three such closely related measures are found it further suggests that each may have bidirectional tendencies see bidirectional variable above being a cluster of correlated values each influencing one another to some extent Therefore the simple conclusion above may be false Example 5 Since the 1950s both the atmospheric CO2 level and obesity levels have increased sharply Hence atmospheric CO2 causes obesity Richer populations tend to eat more food and produce more CO2 Example 6 HDL good cholesterol is negatively correlated with incidence of heart attack Therefore taking medication to raise HDL decreases the chance of having a heart attack Further research 17 has called this conclusion into question Instead it may be that other underlying factors like genes diet and exercise affect both HDL levels and the likelihood of having a heart attack it is possible that medicines may affect the directly measurable factor HDL levels without affecting the chance of heart attack Bidirectional causation A causes B and B causes A edit Causality is not necessarily one way dubious discuss in a predator prey relationship predator numbers affect prey numbers but prey numbers i e food supply also affect predator numbers Another well known example is that cyclists have a lower Body Mass Index than people who do not cycle This is often explained by assuming that cycling increases physical activity levels and therefore decreases BMI Because results from prospective studies on people who increase their bicycle use show a smaller effect on BMI than cross sectional studies there may be some reverse causality as well For example people with a lower BMI may be more likely to want to cycle in the first place 18 The relationship between A and B is coincidental edit Main article Spurious relationship The two variables are not related at all but correlate by chance The more things are examined the more likely it is that two unrelated variables will appear to be related For example The result of the last home game by the Washington Commanders prior to the presidential election predicted the outcome of every presidential election from 1936 to 2000 inclusive despite the fact that the outcomes of football games had nothing to do with the outcome of the popular election This streak was finally broken in 2004 or 2012 using an alternative formulation of the original rule The Mierscheid law which correlates the Social Democratic Party of Germany s share of the popular vote with the size of crude steel production in Western Germany Alternating bald hairy Russian leaders A bald or obviously balding state leader of Russia has succeeded a non bald hairy one and vice versa for nearly 200 years The Bible code Hebrew words predicting historical events supposedly hidden within the Torah the huge number of combinations of letters makes appearances of any word in sufficiently lengthy text statistically insignificant Use of correlation as scientific evidence editMuch of scientific evidence is based upon a correlation of variables 19 that are observed to occur together Scientists are careful to point out that correlation does not necessarily mean causation The assumption that A causes B simply because A correlates with B is often not accepted as a legitimate form of argument However sometimes people commit the opposite fallacy of dismissing correlation entirely That would dismiss a large swath of important scientific evidence 19 Since it may be difficult or ethically impossible to run controlled double blind studies correlational evidence from several different angles may be useful for prediction despite failing to provide evidence for causation For example social workers might be interested in knowing how child abuse relates to academic performance Although it would be unethical to perform an experiment in which children are randomly assigned to receive or not receive abuse researchers can look at existing groups using a non experimental correlational design If in fact a negative correlation exists between abuse and academic performance researchers could potentially use this knowledge of a statistical correlation to make predictions about children outside the study who experience abuse even though the study failed to provide causal evidence that abuse decreases academic performance 20 The combination of limited available methodologies with the dismissing correlation fallacy has on occasion been used to counter a scientific finding For example the tobacco industry has historically relied on a dismissal of correlational evidence to reject a link between tobacco smoke and lung cancer 21 as did biologist and statistician Ronald Fisher frequently on the industry s behalf list 1 Correlation is a valuable type of scientific evidence in fields such as medicine psychology and sociology Correlations must first be confirmed as real and every possible causative relationship must then be systematically explored In the end correlation alone cannot be used as evidence for a cause and effect relationship between a treatment and benefit a risk factor and a disease or a social or economic factor and various outcomes It is one of the most abused types of evidence because it is easy and even tempting to come to premature conclusions based upon the preliminary appearance of a correlation 21 See also editAffirming the consequent Type of fallacious argument logical fallacy Alignments of random points Phenomenon in statistics Anecdotal evidence Evidence relying on personal testimony Apophenia Tendency to perceive connections between unrelated things Post hoc analysis Statistical analyses that were not specified before the data were seen Multiple comparisons problem Statistical interpretation with many tests Look elsewhere effect Statistical analysis phenomenon Data dredging Misuse of data analysis Testing hypotheses suggested by the data when statistical hypotheses are tested with the same dataset that suggested them they are likely to be accepted even though not necessarily true due to circular reasoningPages displaying wikidata descriptions as a fallback Bible code Purported set of secret messages encoded within the Hebrew text of the Torah Bradford Hill criteria Coincidence Causality Concurrence of events with no connection Confounding Variable or factor in causal inference Confusion of the inverse Logical fallacy French paradox Observation that amount heart diseases French people have is much less than is expected Design of experiments Design of tasks Joint effect Apparent but false correlation between causally independent variablesPages displaying short descriptions of redirect targets Mediation statistics Statistical model Normally distributed and uncorrelated does not imply independent Pirates and global warming Satirical deityPages displaying short descriptions of redirect targets Reproducibility Aspect of scientific research Spurious relationship Apparent but false correlation between causally independent variables Teleology Thinking in terms of destiny or purposeReferences edit Tufte 2006 p 5 Aldrich John 1995 Correlations Genuine and Spurious in Pearson and Yule PDF Statistical Science 10 4 364 376 doi 10 1214 ss 1177009870 JSTOR 2246135 Sufficient Wolfram 2019 12 02 Retrieved 2019 12 03 Rohlfing Ingo Schneider Carsten Q 2018 A Unifying Framework for Causal Analysis in Set Theoretic 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London Nature Publishing Group 596 Bibcode 1958Natur 182 596F doi 10 1038 182596a0 PMID 13577916 archived PDF from the original on 2022 10 09 Bundled references 22 23 24 25 26 27 28 Bibliography edit Beebee Helen Hitchcock Christopher Menzies Peter 2009 The Oxford Handbook of Causation Oxford University Press ISBN 978 0 19 162946 4 Tufte Edward R 2006 The Cognitive Style of PowerPoint Pitching Out Corrupts Within 2nd ed Cheshire Connecticut Graphics Press ISBN 978 0 9613921 5 4 Retrieved from https en wikipedia org w index php title Correlation does not imply causation amp oldid 1213500437 B causes A reverse causation or reverse causality, wikipedia, wiki, book, books, library,

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