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Pearson correlation coefficient

In statistics, the Pearson correlation coefficient (PCC)[a] is a correlation coefficient that measures linear correlation between two sets of data. It is the ratio between the covariance of two variables and the product of their standard deviations; thus, it is essentially a normalized measurement of the covariance, such that the result always has a value between −1 and 1. As with covariance itself, the measure can only reflect a linear correlation of variables, and ignores many other types of relationships or correlations. As a simple example, one would expect the age and height of a sample of teenagers from a high school to have a Pearson correlation coefficient significantly greater than 0, but less than 1 (as 1 would represent an unrealistically perfect correlation).

Examples of scatter diagrams with different values of correlation coefficient (ρ)
Several sets of (xy) points, with the correlation coefficient of x and y for each set. The correlation reflects the strength and direction of a linear relationship (top row), but not the slope of that relationship (middle), nor many aspects of nonlinear relationships (bottom). N.B.: the figure in the center has a slope of 0 but in that case the correlation coefficient is undefined because the variance of Y is zero.

Naming and history edit

It was developed by Karl Pearson from a related idea introduced by Francis Galton in the 1880s, and for which the mathematical formula was derived and published by Auguste Bravais in 1844.[b][6][7][8][9] The naming of the coefficient is thus an example of Stigler's Law.

Definition edit

Pearson's correlation coefficient is the covariance of the two variables divided by the product of their standard deviations. The form of the definition involves a "product moment", that is, the mean (the first moment about the origin) of the product of the mean-adjusted random variables; hence the modifier product-moment in the name.

For a population edit

Pearson's correlation coefficient, when applied to a population, is commonly represented by the Greek letter ρ (rho) and may be referred to as the population correlation coefficient or the population Pearson correlation coefficient. Given a pair of random variables   (for example, Height and Weight), the formula for ρ[10] is[11]

 

where

  •   is the covariance
  •   is the standard deviation of  
  •   is the standard deviation of  .

The formula for   can be expressed in terms of mean and expectation. Since[10]

 

the formula for   can also be written as

 

where

  •   and   are defined as above
  •   is the mean of  
  •   is the mean of  
  •   is the expectation.

The formula for   can be expressed in terms of uncentered moments. Since

 

the formula for   can also be written as

 

For a sample edit

Pearson's correlation coefficient, when applied to a sample, is commonly represented by   and may be referred to as the sample correlation coefficient or the sample Pearson correlation coefficient. We can obtain a formula for   by substituting estimates of the covariances and variances based on a sample into the formula above. Given paired data   consisting of   pairs,   is defined as

 

where

  •   is sample size
  •   are the individual sample points indexed with i
  •   (the sample mean); and analogously for  .

Rearranging gives us this formula for  :

 

where   are defined as above.

This formula suggests a convenient single-pass algorithm for calculating sample correlations, though depending on the numbers involved, it can sometimes be numerically unstable.

Rearranging again gives us this[10] formula for  :

 

where   are defined as above.

An equivalent expression gives the formula for   as the mean of the products of the standard scores as follows:

 

where

  •   are defined as above, and   are defined below
  •   is the standard score (and analogously for the standard score of  ).

Alternative formulae for   are also available. For example, one can use the following formula for  :

 

where

  •   are defined as above and:
  •   (the sample standard deviation); and analogously for  .

For jointly gaussian distributions edit

If   is jointly gaussian, with mean zero and variance  , then  .

Practical issues edit

Under heavy noise conditions, extracting the correlation coefficient between two sets of stochastic variables is nontrivial, in particular where Canonical Correlation Analysis reports degraded correlation values due to the heavy noise contributions. A generalization of the approach is given elsewhere.[12]

In case of missing data, Garren derived the maximum likelihood estimator.[13]

Some distributions (e.g., stable distributions other than a normal distribution) do not have a defined variance.

Mathematical properties edit

The values of both the sample and population Pearson correlation coefficients are on or between −1 and 1. Correlations equal to +1 or −1 correspond to data points lying exactly on a line (in the case of the sample correlation), or to a bivariate distribution entirely supported on a line (in the case of the population correlation). The Pearson correlation coefficient is symmetric: corr(X,Y) = corr(Y,X).

A key mathematical property of the Pearson correlation coefficient is that it is invariant under separate changes in location and scale in the two variables. That is, we may transform X to a + bX and transform Y to c + dY, where a, b, c, and d are constants with b, d > 0, without changing the correlation coefficient. (This holds for both the population and sample Pearson correlation coefficients.) More general linear transformations do change the correlation: see § Decorrelation of n random variables for an application of this.

Interpretation edit

The correlation coefficient ranges from −1 to 1. An absolute value of exactly 1 implies that a linear equation describes the relationship between X and Y perfectly, with all data points lying on a line. The correlation sign is determined by the regression slope: a value of +1 implies that all data points lie on a line for which Y increases as X increases, and vice versa for −1.[14] A value of 0 implies that there is no linear dependency between the variables.[15]

More generally, (XiX)(YiY) is positive if and only if Xi and Yi lie on the same side of their respective means. Thus the correlation coefficient is positive if Xi and Yi tend to be simultaneously greater than, or simultaneously less than, their respective means. The correlation coefficient is negative (anti-correlation) if Xi and Yi tend to lie on opposite sides of their respective means. Moreover, the stronger either tendency is, the larger is the absolute value of the correlation coefficient.

Rodgers and Nicewander[16] cataloged thirteen ways of interpreting correlation or simple functions of it:

  • Function of raw scores and means
  • Standardized covariance
  • Standardized slope of the regression line
  • Geometric mean of the two regression slopes
  • Square root of the ratio of two variances
  • Mean cross-product of standardized variables
  • Function of the angle between two standardized regression lines
  • Function of the angle between two variable vectors
  • Rescaled variance of the difference between standardized scores
  • Estimated from the balloon rule
  • Related to the bivariate ellipses of isoconcentration
  • Function of test statistics from designed experiments
  • Ratio of two means

Geometric interpretation edit

 
Regression lines for y = gX(x) [red] and x = gY(y) [blue]

For uncentered data, there is a relation between the correlation coefficient and the angle φ between the two regression lines, y = gX(x) and x = gY(y), obtained by regressing y on x and x on y respectively. (Here, φ is measured counterclockwise within the first quadrant formed around the lines' intersection point if r > 0, or counterclockwise from the fourth to the second quadrant if r < 0.) One can show[17] that if the standard deviations are equal, then r = sec φ − tan φ, where sec and tan are trigonometric functions.

For centered data (i.e., data which have been shifted by the sample means of their respective variables so as to have an average of zero for each variable), the correlation coefficient can also be viewed as the cosine of the angle θ between the two observed vectors in N-dimensional space (for N observations of each variable)[18]

Both the uncentered (non-Pearson-compliant) and centered correlation coefficients can be determined for a dataset. As an example, suppose five countries are found to have gross national products of 1, 2, 3, 5, and 8 billion dollars, respectively. Suppose these same five countries (in the same order) are found to have 11%, 12%, 13%, 15%, and 18% poverty. Then let x and y be ordered 5-element vectors containing the above data: x = (1, 2, 3, 5, 8) and y = (0.11, 0.12, 0.13, 0.15, 0.18).

By the usual procedure for finding the angle θ between two vectors (see dot product), the uncentered correlation coefficient is

 

This uncentered correlation coefficient is identical with the cosine similarity. The above data were deliberately chosen to be perfectly correlated: y = 0.10 + 0.01 x. The Pearson correlation coefficient must therefore be exactly one. Centering the data (shifting x by ℰ(x) = 3.8 and y by ℰ(y) = 0.138) yields x = (−2.8, −1.8, −0.8, 1.2, 4.2) and y = (−0.028, −0.018, −0.008, 0.012, 0.042), from which

 

as expected.

Interpretation of the size of a correlation edit

 
This figure gives a sense of how the usefulness of a Pearson correlation for predicting values varies with its magnitude. Given jointly normal X, Y with correlation ρ,   (plotted here as a function of ρ) is the factor by which a given prediction interval for Y may be reduced given the corresponding value of X. For example, if ρ = 0.5, then the 95% prediction interval of Y|X will be about 13% smaller than the 95% prediction interval of Y.

Several authors have offered guidelines for the interpretation of a correlation coefficient.[19][20] However, all such criteria are in some ways arbitrary.[20] The interpretation of a correlation coefficient depends on the context and purposes. A correlation of 0.8 may be very low if one is verifying a physical law using high-quality instruments, but may be regarded as very high in the social sciences, where there may be a greater contribution from complicating factors.

Inference edit

Statistical inference based on Pearson's correlation coefficient often focuses on one of the following two aims:

  • One aim is to test the null hypothesis that the true correlation coefficient ρ is equal to 0, based on the value of the sample correlation coefficient r.
  • The other aim is to derive a confidence interval that, on repeated sampling, has a given probability of containing ρ.

Methods of achieving one or both of these aims are discussed below.

Using a permutation test edit

Permutation tests provide a direct approach to performing hypothesis tests and constructing confidence intervals. A permutation test for Pearson's correlation coefficient involves the following two steps:

  1. Using the original paired data (xiyi), randomly redefine the pairs to create a new data set (xiyi′), where the i′ are a permutation of the set {1,...,n}. The permutation i′ is selected randomly, with equal probabilities placed on all n! possible permutations. This is equivalent to drawing the i′ randomly without replacement from the set {1, ..., n}. In bootstrapping, a closely related approach, the i and the i′ are equal and drawn with replacement from {1, ..., n};
  2. Construct a correlation coefficient r from the randomized data.

To perform the permutation test, repeat steps (1) and (2) a large number of times. The p-value for the permutation test is the proportion of the r values generated in step (2) that are larger than the Pearson correlation coefficient that was calculated from the original data. Here "larger" can mean either that the value is larger in magnitude, or larger in signed value, depending on whether a two-sided or one-sided test is desired.

Using a bootstrap edit

The bootstrap can be used to construct confidence intervals for Pearson's correlation coefficient. In the "non-parametric" bootstrap, n pairs (xiyi) are resampled "with replacement" from the observed set of n pairs, and the correlation coefficient r is calculated based on the resampled data. This process is repeated a large number of times, and the empirical distribution of the resampled r values are used to approximate the sampling distribution of the statistic. A 95% confidence interval for ρ can be defined as the interval spanning from the 2.5th to the 97.5th percentile of the resampled r values.

Standard error edit

If   and   are random variables, a standard error associated to the correlation in the null case is

 

where   is the correlation (assumed r≈0) and   the sample size.[21][22]

Testing using Student's t-distribution edit

 
Critical values of Pearson's correlation coefficient that must be exceeded to be considered significantly nonzero at the 0.05 level.

For pairs from an uncorrelated bivariate normal distribution, the sampling distribution of the studentized Pearson's correlation coefficient follows Student's t-distribution with degrees of freedom n − 2. Specifically, if the underlying variables have a bivariate normal distribution, the variable

 

has a student's t-distribution in the null case (zero correlation).[23] This holds approximately in case of non-normal observed values if sample sizes are large enough.[24] For determining the critical values for r the inverse function is needed:

 

Alternatively, large sample, asymptotic approaches can be used.

Another early paper[25] provides graphs and tables for general values of ρ, for small sample sizes, and discusses computational approaches.

In the case where the underlying variables are not normal, the sampling distribution of Pearson's correlation coefficient follows a Student's t-distribution, but the degrees of freedom are reduced.[26]

Using the exact distribution edit

For data that follow a bivariate normal distribution, the exact density function f(r) for the sample correlation coefficient r of a normal bivariate is[27][28][29]

 

where   is the gamma function and   is the Gaussian hypergeometric function.

In the special case when   (zero population correlation), the exact density function f(r) can be written as

 

where   is the beta function, which is one way of writing the density of a Student's t-distribution, as above.

Using the exact confidence distribution edit

Confidence intervals and tests can be calculated from a confidence distribution. An exact confidence density for ρ is[30]

 

where   is the Gaussian hypergeometric function and  .

Using the Fisher transformation edit

In practice, confidence intervals and hypothesis tests relating to ρ are usually carried out using the Fisher transformation,  :

 

F(r) approximately follows a normal distribution with

     and standard error  

where n is the sample size. The approximation error is lowest for a large sample size   and small   and   and increases otherwise.

Using the approximation, a z-score is

 

under the null hypothesis that  , given the assumption that the sample pairs are independent and identically distributed and follow a bivariate normal distribution. Thus an approximate p-value can be obtained from a normal probability table. For example, if z = 2.2 is observed and a two-sided p-value is desired to test the null hypothesis that  , the p-value is 2 Φ(−2.2) = 0.028, where Φ is the standard normal cumulative distribution function.

To obtain a confidence interval for ρ, we first compute a confidence interval for F( ):

 

The inverse Fisher transformation brings the interval back to the correlation scale.

 

For example, suppose we observe r = 0.7 with a sample size of n=50, and we wish to obtain a 95% confidence interval for ρ. The transformed value is  , so the confidence interval on the transformed scale is  , or (0.5814, 1.1532). Converting back to the correlation scale yields (0.5237, 0.8188).

In least squares regression analysis edit

The square of the sample correlation coefficient is typically denoted r2 and is a special case of the coefficient of determination. In this case, it estimates the fraction of the variance in Y that is explained by X in a simple linear regression. So if we have the observed dataset   and the fitted dataset   then as a starting point the total variation in the Yi around their average value can be decomposed as follows

 

where the   are the fitted values from the regression analysis. This can be rearranged to give

 

The two summands above are the fraction of variance in Y that is explained by X (right) and that is unexplained by X (left).

Next, we apply a property of least square regression models, that the sample covariance between   and   is zero. Thus, the sample correlation coefficient between the observed and fitted response values in the regression can be written (calculation is under expectation, assumes Gaussian statistics)

 

Thus

 

where   is the proportion of variance in Y explained by a linear function of X.

In the derivation above, the fact that

 

can be proved by noticing that the partial derivatives of the residual sum of squares (RSS) over β0 and β1 are equal to 0 in the least squares model, where

 .

In the end, the equation can be written as

 

where

  •  
  •  .

The symbol   is called the regression sum of squares, also called the explained sum of squares, and   is the total sum of squares (proportional to the variance of the data).

Sensitivity to the data distribution edit

Existence edit

The population Pearson correlation coefficient is defined in terms of moments, and therefore exists for any bivariate probability distribution for which the population covariance is defined and the marginal population variances are defined and are non-zero. Some probability distributions, such as the Cauchy distribution, have undefined variance and hence ρ is not defined if X or Y follows such a distribution. In some practical applications, such as those involving data suspected to follow a heavy-tailed distribution, this is an important consideration. However, the existence of the correlation coefficient is usually not a concern; for instance, if the range of the distribution is bounded, ρ is always defined.

Sample size edit

  • If the sample size is moderate or large and the population is normal, then, in the case of the bivariate normal distribution, the sample correlation coefficient is the maximum likelihood estimate of the population correlation coefficient, and is asymptotically unbiased and efficient, which roughly means that it is impossible to construct a more accurate estimate than the sample correlation coefficient.
  • If the sample size is large and the population is not normal, then the sample correlation coefficient remains approximately unbiased, but may not be efficient.
  • If the sample size is large, then the sample correlation coefficient is a consistent estimator of the population correlation coefficient as long as the sample means, variances, and covariance are consistent (which is guaranteed when the law of large numbers can be applied).
  • If the sample size is small, then the sample correlation coefficient r is not an unbiased estimate of ρ.[10] The adjusted correlation coefficient must be used instead: see elsewhere in this article for the definition.
  • Correlations can be different for imbalanced dichotomous data when there is variance error in sample.[31]

Robustness edit

Like many commonly used statistics, the sample statistic r is not robust,[32] so its value can be misleading if outliers are present.[33][34] Specifically, the PMCC is neither distributionally robust,[citation needed] nor outlier resistant[32] (see Robust statistics § Definition). Inspection of the scatterplot between X and Y will typically reveal a situation where lack of robustness might be an issue, and in such cases it may be advisable to use a robust measure of association. Note however that while most robust estimators of association measure statistical dependence in some way, they are generally not interpretable on the same scale as the Pearson correlation coefficient.

Statistical inference for Pearson's correlation coefficient is sensitive to the data distribution. Exact tests, and asymptotic tests based on the Fisher transformation can be applied if the data are approximately normally distributed, but may be misleading otherwise. In some situations, the bootstrap can be applied to construct confidence intervals, and permutation tests can be applied to carry out hypothesis tests. These non-parametric approaches may give more meaningful results in some situations where bivariate normality does not hold. However the standard versions of these approaches rely on exchangeability of the data, meaning that there is no ordering or grouping of the data pairs being analyzed that might affect the behavior of the correlation estimate.

A stratified analysis is one way to either accommodate a lack of bivariate normality, or to isolate the correlation resulting from one factor while controlling for another. If W represents cluster membership or another factor that it is desirable to control, we can stratify the data based on the value of W, then calculate a correlation coefficient within each stratum. The stratum-level estimates can then be combined to estimate the overall correlation while controlling for W.[35]

Variants edit

Variations of the correlation coefficient can be calculated for different purposes. Here are some examples.

Adjusted correlation coefficient edit

The sample correlation coefficient r is not an unbiased estimate of ρ. For data that follows a bivariate normal distribution, the expectation E[r] for the sample correlation coefficient r of a normal bivariate is[36]

  therefore r is a biased estimator of  

The unique minimum variance unbiased estimator radj is given by[37]

 

 

 

 

 

(1)

where:

  •   are defined as above,
  •   is the Gaussian hypergeometric function.

An approximately unbiased estimator radj can be obtained[citation needed] by truncating E[r] and solving this truncated equation:

 

 

 

 

 

(2)

An approximate solution[citation needed] to equation (2) is

 

 

 

 

 

(3)

where in (3)

  •   are defined as above,
  • radj is a suboptimal estimator,[citation needed][clarification needed]
  • radj can also be obtained by maximizing log(f(r)),
  • radj has minimum variance for large values of n,
  • radj has a bias of order 1(n − 1).

Another proposed[10] adjusted correlation coefficient is[citation needed]

 

radjr for large values of n.

Weighted correlation coefficient edit

Suppose observations to be correlated have differing degrees of importance that can be expressed with a weight vector w. To calculate the correlation between vectors x and y with the weight vector w (all of length n),[38][39]

  • Weighted mean:
     
  • Weighted covariance
     
  • Weighted correlation
     

Reflective correlation coefficient edit

The reflective correlation is a variant of Pearson's correlation in which the data are not centered around their mean values.[citation needed] The population reflective correlation is

 

The reflective correlation is symmetric, but it is not invariant under translation:

 

The sample reflective correlation is equivalent to cosine similarity:

 

The weighted version of the sample reflective correlation is

 

Scaled correlation coefficient edit

Scaled correlation is a variant of Pearson's correlation in which the range of the data is restricted intentionally and in a controlled manner to reveal correlations between fast components in time series.[40] Scaled correlation is defined as average correlation across short segments of data.

Let   be the number of segments that can fit into the total length of the signal   for a given scale  :

 

The scaled correlation across the entire signals   is then computed as

 

where   is Pearson's coefficient of correlation for segment  .

By choosing the parameter  , the range of values is reduced and the correlations on long time scale are filtered out, only the correlations on short time scales being revealed. Thus, the contributions of slow components are removed and those of fast components are retained.

Pearson's distance edit

A distance metric for two variables X and Y known as Pearson's distance can be defined from their correlation coefficient as[41]

 

Considering that the Pearson correlation coefficient falls between [−1, +1], the Pearson distance lies in [0, 2]. The Pearson distance has been used in cluster analysis and data detection for communications and storage with unknown gain and offset.[42]

The Pearson "distance" defined this way assigns distance greater than 1 to negative correlations. In reality, both strong positive correlation and negative correlations are meaningful, so care must be taken when Pearson "distance" is used for nearest neighbor algorithm as such algorithm will only include neighbors with positive correlation and exclude neighbors with negative correlation. Alternatively, an absolute valued distance,  , can be applied, which will take both positive and negative correlations into consideration. The information on positive and negative association can be extracted separately, later.

Circular correlation coefficient edit

For variables X = {x1,...,xn} and Y = {y1,...,yn} that are defined on the unit circle [0, 2π), it is possible to define a circular analog of Pearson's coefficient.[43] This is done by transforming data points in X and Y with a sine function such that the correlation coefficient is given as:

 

where   and   are the circular means of X and Y. This measure can be useful in fields like meteorology where the angular direction of data is important.

Partial correlation edit

If a population or data-set is characterized by more than two variables, a partial correlation coefficient measures the strength of dependence between a pair of variables that is not accounted for by the way in which they both change in response to variations in a selected subset of the other variables.

Decorrelation of n random variables edit

It is always possible to remove the correlations between all pairs of an arbitrary number of random variables by using a data transformation, even if the relationship between the variables is nonlinear. A presentation of this result for population distributions is given by Cox & Hinkley.[44]

A corresponding result exists for reducing the sample correlations to zero. Suppose a vector of n random variables is observed m times. Let X be a matrix where   is the jth variable of observation i. Let   be an m by m square matrix with every element 1. Then D is the data transformed so every random variable has zero mean, and T is the data transformed so all variables have zero mean and zero correlation with all other variables – the sample correlation matrix of T will be the identity matrix. This has to be further divided by the standard deviation to get unit variance. The transformed variables will be uncorrelated, even though they may not be independent.

 
 

where an exponent of +12 represents the matrix square root of the inverse of a matrix. The correlation matrix of T will be the identity matrix. If a new data observation x is a row vector of n elements, then the same transform can be applied to x to get the transformed vectors d and t:

 
 

This decorrelation is related to principal components analysis for multivariate data.

Software implementations edit

  • R's statistics base-package implements the correlation coefficient with cor(x, y), or (with the P value also) with cor.test(x, y).
  • The SciPy Python library via pearsonr(x, y).
  • The Pandas Python library implements Pearson correlation coefficient calculation as the default option for the method pandas.DataFrame.corr
  • Wolfram Mathematica via the Correlation function, or (with the P value) with CorrelationTest.
  • The Boost C++ library via the correlation_coefficient function.
  • Excel has an in-built correl(array1, array2) function for calculating the pearson's correlation coefficient.

See also edit

Footnotes edit

  1. ^ Also known as Pearson's r, the Pearson product-moment correlation coefficient (PPMCC), the bivariate correlation,[1] or simply the unqualified correlation coefficient[2]
  2. ^ As early as 1877, Galton was using the term "reversion" and the symbol "r" for what would become "regression".[3][4][5]

References edit

  1. ^ "SPSS Tutorials: Pearson Correlation".
  2. ^ "Correlation Coefficient: Simple Definition, Formula, Easy Steps". Statistics How To.
  3. ^ Galton, F. (5–19 April 1877). "Typical laws of heredity". Nature. 15 (388, 389, 390): 492–495, 512–514, 532–533. Bibcode:1877Natur..15..492.. doi:10.1038/015492a0. S2CID 4136393. In the "Appendix" on page 532, Galton uses the term "reversion" and the symbol r.
  4. ^ Galton, F. (24 September 1885). "The British Association: Section II, Anthropology: Opening address by Francis Galton, F.R.S., etc., President of the Anthropological Institute, President of the Section". Nature. 32 (830): 507–510.
  5. ^ Galton, F. (1886). "Regression towards mediocrity in hereditary stature". Journal of the Anthropological Institute of Great Britain and Ireland. 15: 246–263. doi:10.2307/2841583. JSTOR 2841583.
  6. ^ Pearson, Karl (20 June 1895). "Notes on regression and inheritance in the case of two parents". Proceedings of the Royal Society of London. 58: 240–242. Bibcode:1895RSPS...58..240P.
  7. ^ Stigler, Stephen M. (1989). "Francis Galton's account of the invention of correlation". Statistical Science. 4 (2): 73–79. doi:10.1214/ss/1177012580. JSTOR 2245329.
  8. ^ "Analyse mathematique sur les probabilités des erreurs de situation d'un point". Mem. Acad. Roy. Sci. Inst. France. Sci. Math, et Phys. (in French). 9: 255–332. 1844 – via Google Books.
  9. ^ Wright, S. (1921). "Correlation and causation". Journal of Agricultural Research. 20 (7): 557–585.
  10. ^ a b c d e Real Statistics Using Excel, "Basic Concepts of Correlation", retrieved 22 February 2015.
  11. ^ Weisstein, Eric W. "Statistical Correlation". Wolfram MathWorld. Retrieved 22 August 2020.
  12. ^ Moriya, N. (2008). "Noise-related multivariate optimal joint-analysis in longitudinal stochastic processes". In Yang, Fengshan (ed.). Progress in Applied Mathematical Modeling. Nova Science Publishers, Inc. pp. 223–260. ISBN 978-1-60021-976-4.
  13. ^ Garren, Steven T. (15 June 1998). "Maximum likelihood estimation of the correlation coefficient in a bivariate normal model, with missing data". Statistics & Probability Letters. 38 (3): 281–288. doi:10.1016/S0167-7152(98)00035-2.
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  17. ^ Schmid, John Jr. (December 1947). "The relationship between the coefficient of correlation and the angle included between regression lines". The Journal of Educational Research. 41 (4): 311–313. doi:10.1080/00220671.1947.10881608. JSTOR 27528906.
  18. ^ Rummel, R.J. (1976). "Understanding Correlation". ch. 5 (as illustrated for a special case in the next paragraph).
  19. ^ Buda, Andrzej; Jarynowski, Andrzej (December 2010). Life Time of Correlations and its Applications. Wydawnictwo Niezależne. pp. 5–21. ISBN 9788391527290.
  20. ^ a b Cohen, J. (1988). Statistical Power Analysis for the Behavioral Sciences (2nd ed.).
  21. ^ Bowley, A. L. (1928). "The Standard Deviation of the Correlation Coefficient". Journal of the American Statistical Association. 23 (161): 31–34. doi:10.2307/2277400. ISSN 0162-1459. JSTOR 2277400.
  22. ^ "Derivation of the standard error for Pearson's correlation coefficient". Cross Validated. Retrieved 30 July 2021.
  23. ^ Rahman, N. A. (1968) A Course in Theoretical Statistics, Charles Griffin and Company, 1968
  24. ^ Kendall, M. G., Stuart, A. (1973) The Advanced Theory of Statistics, Volume 2: Inference and Relationship, Griffin. ISBN 0-85264-215-6 (Section 31.19)
  25. ^ Soper, H.E.; Young, A.W.; Cave, B.M.; Lee, A.; Pearson, K. (1917). "On the distribution of the correlation coefficient in small samples. Appendix II to the papers of "Student" and R.A. Fisher. A co-operative study". Biometrika. 11 (4): 328–413. doi:10.1093/biomet/11.4.328.
  26. ^ Davey, Catherine E.; Grayden, David B.; Egan, Gary F.; Johnston, Leigh A. (January 2013). "Filtering induces correlation in fMRI resting state data". NeuroImage. 64: 728–740. doi:10.1016/j.neuroimage.2012.08.022. hdl:11343/44035. PMID 22939874. S2CID 207184701.
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External links edit

  • "cocor". comparingcorrelations.org. – A free web interface and R package for the statistical comparison of two dependent or independent correlations with overlapping or non-overlapping variables.
  • "Correlation". nagysandor.eu. – an interactive Flash simulation on the correlation of two normally distributed variables.
  • "Correlation coefficient calculator". hackmath.net. Linear regression.
  • "Critical values for Pearson's correlation coefficient" (PDF). frank.mtsu.edu/~dkfuller. – large table.
  • "Guess the Correlation". – A game where players guess how correlated two variables in a scatter plot are, in order to gain a better understanding of the concept of correlation.

pearson, correlation, coefficient, confused, with, coefficient, determination, statistics, correlation, coefficient, that, measures, linear, correlation, between, sets, data, ratio, between, covariance, variables, product, their, standard, deviations, thus, es. Not to be confused with Coefficient of determination In statistics the Pearson correlation coefficient PCC a is a correlation coefficient that measures linear correlation between two sets of data It is the ratio between the covariance of two variables and the product of their standard deviations thus it is essentially a normalized measurement of the covariance such that the result always has a value between 1 and 1 As with covariance itself the measure can only reflect a linear correlation of variables and ignores many other types of relationships or correlations As a simple example one would expect the age and height of a sample of teenagers from a high school to have a Pearson correlation coefficient significantly greater than 0 but less than 1 as 1 would represent an unrealistically perfect correlation Examples of scatter diagrams with different values of correlation coefficient r Several sets of x y points with the correlation coefficient of x and y for each set The correlation reflects the strength and direction of a linear relationship top row but not the slope of that relationship middle nor many aspects of nonlinear relationships bottom N B the figure in the center has a slope of 0 but in that case the correlation coefficient is undefined because the variance of Y is zero Contents 1 Naming and history 2 Definition 2 1 For a population 2 2 For a sample 2 3 For jointly gaussian distributions 2 4 Practical issues 3 Mathematical properties 4 Interpretation 4 1 Geometric interpretation 4 2 Interpretation of the size of a correlation 5 Inference 5 1 Using a permutation test 5 2 Using a bootstrap 5 3 Standard error 5 4 Testing using Student s t distribution 5 5 Using the exact distribution 5 5 1 Using the exact confidence distribution 5 6 Using the Fisher transformation 6 In least squares regression analysis 7 Sensitivity to the data distribution 7 1 Existence 7 2 Sample size 7 3 Robustness 8 Variants 8 1 Adjusted correlation coefficient 8 2 Weighted correlation coefficient 8 3 Reflective correlation coefficient 8 4 Scaled correlation coefficient 8 5 Pearson s distance 8 6 Circular correlation coefficient 8 7 Partial correlation 9 Decorrelation of n random variables 10 Software implementations 11 See also 12 Footnotes 13 References 14 External linksNaming and history editIt was developed by Karl Pearson from a related idea introduced by Francis Galton in the 1880s and for which the mathematical formula was derived and published by Auguste Bravais in 1844 b 6 7 8 9 The naming of the coefficient is thus an example of Stigler s Law Definition editPearson s correlation coefficient is the covariance of the two variables divided by the product of their standard deviations The form of the definition involves a product moment that is the mean the first moment about the origin of the product of the mean adjusted random variables hence the modifier product moment in the name For a population edit Pearson s correlation coefficient when applied to a population is commonly represented by the Greek letter r rho and may be referred to as the population correlation coefficient or the population Pearson correlation coefficient Given a pair of random variables X Y displaystyle X Y nbsp for example Height and Weight the formula for r 10 is 11 r X Y cov X Y s X s Y displaystyle rho X Y frac operatorname cov X Y sigma X sigma Y nbsp where cov displaystyle operatorname cov nbsp is the covariance s X displaystyle sigma X nbsp is the standard deviation of X displaystyle X nbsp s Y displaystyle sigma Y nbsp is the standard deviation of Y displaystyle Y nbsp The formula for cov X Y displaystyle operatorname cov X Y nbsp can be expressed in terms of mean and expectation Since 10 cov X Y E X m X Y m Y displaystyle operatorname cov X Y operatorname mathbb E X mu X Y mu Y nbsp the formula for r displaystyle rho nbsp can also be written asr X Y E X m X Y m Y s X s Y displaystyle rho X Y frac operatorname mathbb E X mu X Y mu Y sigma X sigma Y nbsp where s Y displaystyle sigma Y nbsp and s X displaystyle sigma X nbsp are defined as above m X displaystyle mu X nbsp is the mean of X displaystyle X nbsp m Y displaystyle mu Y nbsp is the mean of Y displaystyle Y nbsp E displaystyle operatorname mathbb E nbsp is the expectation The formula for r displaystyle rho nbsp can be expressed in terms of uncentered moments Since m X E X m Y E Y s X 2 E X E X 2 E X 2 E X 2 s Y 2 E Y E Y 2 E Y 2 E Y 2 E X m X Y m Y E X E X Y E Y E X Y E X E Y displaystyle begin aligned mu X amp operatorname mathbb E X mu Y amp operatorname mathbb E Y sigma X 2 amp operatorname mathbb E left left X operatorname mathbb E X right 2 right operatorname mathbb E left X 2 right left operatorname mathbb E X right 2 sigma Y 2 amp operatorname mathbb E left left Y operatorname mathbb E Y right 2 right operatorname mathbb E left Y 2 right left operatorname mathbb E Y right 2 amp operatorname mathbb E left X mu X right left Y mu Y right operatorname mathbb E left X operatorname mathbb E X right left Y operatorname mathbb E Y right operatorname mathbb E X Y operatorname mathbb E X operatorname mathbb E Y end aligned nbsp the formula for r displaystyle rho nbsp can also be written asr X Y E X Y E X E Y E X 2 E X 2 E Y 2 E Y 2 displaystyle rho X Y frac operatorname mathbb E X Y operatorname mathbb E X operatorname mathbb E Y sqrt operatorname mathbb E left X 2 right left operatorname mathbb E X right 2 sqrt operatorname mathbb E left Y 2 right left operatorname mathbb E Y right 2 nbsp For a sample edit Pearson s correlation coefficient when applied to a sample is commonly represented by r x y displaystyle r xy nbsp and may be referred to as the sample correlation coefficient or the sample Pearson correlation coefficient We can obtain a formula for r x y displaystyle r xy nbsp by substituting estimates of the covariances and variances based on a sample into the formula above Given paired data x 1 y 1 x n y n displaystyle left x 1 y 1 ldots x n y n right nbsp consisting of n displaystyle n nbsp pairs r x y displaystyle r xy nbsp is defined asr x y i 1 n x i x y i y i 1 n x i x 2 i 1 n y i y 2 displaystyle r xy frac sum i 1 n x i bar x y i bar y sqrt sum i 1 n x i bar x 2 sqrt sum i 1 n y i bar y 2 nbsp where n displaystyle n nbsp is sample size x i y i displaystyle x i y i nbsp are the individual sample points indexed with i x 1 n i 1 n x i textstyle bar x frac 1 n sum i 1 n x i nbsp the sample mean and analogously for y displaystyle bar y nbsp Rearranging gives us this formula for r x y displaystyle r xy nbsp r x y n x i y i x i y i n x i 2 x i 2 n y i 2 y i 2 displaystyle r xy frac n sum x i y i sum x i sum y i sqrt n sum x i 2 left sum x i right 2 sqrt n sum y i 2 left sum y i right 2 nbsp where n x i y i displaystyle n x i y i nbsp are defined as above This formula suggests a convenient single pass algorithm for calculating sample correlations though depending on the numbers involved it can sometimes be numerically unstable Rearranging again gives us this 10 formula for r x y displaystyle r xy nbsp r x y i x i y i n x y i x i 2 n x 2 i y i 2 n y 2 displaystyle r xy frac sum i x i y i n bar x bar y sqrt sum i x i 2 n bar x 2 sqrt sum i y i 2 n bar y 2 nbsp where n x i y i x y displaystyle n x i y i bar x bar y nbsp are defined as above An equivalent expression gives the formula for r x y displaystyle r xy nbsp as the mean of the products of the standard scores as follows r x y 1 n 1 i 1 n x i x s x y i y s y displaystyle r xy frac 1 n 1 sum i 1 n left frac x i bar x s x right left frac y i bar y s y right nbsp where n x i y i x y displaystyle n x i y i bar x bar y nbsp are defined as above and s x s y displaystyle s x s y nbsp are defined below x i x s x textstyle left frac x i bar x s x right nbsp is the standard score and analogously for the standard score of y displaystyle y nbsp Alternative formulae for r x y displaystyle r xy nbsp are also available For example one can use the following formula for r x y displaystyle r xy nbsp r x y x i y i n x y n 1 s x s y displaystyle r xy frac sum x i y i n bar x bar y n 1 s x s y nbsp where n x i y i x y displaystyle n x i y i bar x bar y nbsp are defined as above and s x 1 n 1 i 1 n x i x 2 textstyle s x sqrt frac 1 n 1 sum i 1 n x i bar x 2 nbsp the sample standard deviation and analogously for s y displaystyle s y nbsp For jointly gaussian distributions edit If X Y displaystyle X Y nbsp is jointly gaussian with mean zero and variance S displaystyle Sigma nbsp then S s X 2 r X Y s X s Y r X Y s X s Y s Y 2 displaystyle Sigma begin bmatrix sigma X 2 amp rho X Y sigma X sigma Y rho X Y sigma X sigma Y amp sigma Y 2 end bmatrix nbsp Practical issues edit Under heavy noise conditions extracting the correlation coefficient between two sets of stochastic variables is nontrivial in particular where Canonical Correlation Analysis reports degraded correlation values due to the heavy noise contributions A generalization of the approach is given elsewhere 12 In case of missing data Garren derived the maximum likelihood estimator 13 Some distributions e g stable distributions other than a normal distribution do not have a defined variance Mathematical properties editThe values of both the sample and population Pearson correlation coefficients are on or between 1 and 1 Correlations equal to 1 or 1 correspond to data points lying exactly on a line in the case of the sample correlation or to a bivariate distribution entirely supported on a line in the case of the population correlation The Pearson correlation coefficient is symmetric corr X Y corr Y X A key mathematical property of the Pearson correlation coefficient is that it is invariant under separate changes in location and scale in the two variables That is we may transform X to a bX and transform Y to c dY where a b c and d are constants with b d gt 0 without changing the correlation coefficient This holds for both the population and sample Pearson correlation coefficients More general linear transformations do change the correlation see Decorrelation of n random variables for an application of this Interpretation editThe correlation coefficient ranges from 1 to 1 An absolute value of exactly 1 implies that a linear equation describes the relationship between X and Y perfectly with all data points lying on a line The correlation sign is determined by the regression slope a value of 1 implies that all data points lie on a line for which Y increases as X increases and vice versa for 1 14 A value of 0 implies that there is no linear dependency between the variables 15 More generally Xi X Yi Y is positive if and only if Xi and Yi lie on the same side of their respective means Thus the correlation coefficient is positive if Xi and Yi tend to be simultaneously greater than or simultaneously less than their respective means The correlation coefficient is negative anti correlation if Xi and Yi tend to lie on opposite sides of their respective means Moreover the stronger either tendency is the larger is the absolute value of the correlation coefficient Rodgers and Nicewander 16 cataloged thirteen ways of interpreting correlation or simple functions of it Function of raw scores and means Standardized covariance Standardized slope of the regression line Geometric mean of the two regression slopes Square root of the ratio of two variances Mean cross product of standardized variables Function of the angle between two standardized regression lines Function of the angle between two variable vectors Rescaled variance of the difference between standardized scores Estimated from the balloon rule Related to the bivariate ellipses of isoconcentration Function of test statistics from designed experiments Ratio of two meansGeometric interpretation edit nbsp Regression lines for y gX x red and x gY y blue For uncentered data there is a relation between the correlation coefficient and the angle f between the two regression lines y gX x and x gY y obtained by regressing y on x and x on y respectively Here f is measured counterclockwise within the first quadrant formed around the lines intersection point if r gt 0 or counterclockwise from the fourth to the second quadrant if r lt 0 One can show 17 that if the standard deviations are equal then r sec f tan f where sec and tan are trigonometric functions For centered data i e data which have been shifted by the sample means of their respective variables so as to have an average of zero for each variable the correlation coefficient can also be viewed as the cosine of the angle 8 between the two observed vectors in N dimensional space for N observations of each variable 18 Both the uncentered non Pearson compliant and centered correlation coefficients can be determined for a dataset As an example suppose five countries are found to have gross national products of 1 2 3 5 and 8 billion dollars respectively Suppose these same five countries in the same order are found to have 11 12 13 15 and 18 poverty Then let x and y be ordered 5 element vectors containing the above data x 1 2 3 5 8 and y 0 11 0 12 0 13 0 15 0 18 By the usual procedure for finding the angle 8 between two vectors see dot product the uncentered correlation coefficient is cos 8 x y x y 2 93 103 0 0983 0 920814711 displaystyle cos theta frac mathbf x cdot mathbf y left mathbf x right left mathbf y right frac 2 93 sqrt 103 sqrt 0 0983 0 920814711 nbsp This uncentered correlation coefficient is identical with the cosine similarity The above data were deliberately chosen to be perfectly correlated y 0 10 0 01 x The Pearson correlation coefficient must therefore be exactly one Centering the data shifting x by ℰ x 3 8 and y by ℰ y 0 138 yields x 2 8 1 8 0 8 1 2 4 2 and y 0 028 0 018 0 008 0 012 0 042 from which cos 8 x y x y 0 308 30 8 0 00308 1 r x y displaystyle cos theta frac mathbf x cdot mathbf y left mathbf x right left mathbf y right frac 0 308 sqrt 30 8 sqrt 0 00308 1 rho xy nbsp as expected Interpretation of the size of a correlation edit nbsp This figure gives a sense of how the usefulness of a Pearson correlation for predicting values varies with its magnitude Given jointly normal X Y with correlation r 1 1 r 2 displaystyle 1 sqrt 1 rho 2 nbsp plotted here as a function of r is the factor by which a given prediction interval for Y may be reduced given the corresponding value of X For example if r 0 5 then the 95 prediction interval of Y X will be about 13 smaller than the 95 prediction interval of Y Several authors have offered guidelines for the interpretation of a correlation coefficient 19 20 However all such criteria are in some ways arbitrary 20 The interpretation of a correlation coefficient depends on the context and purposes A correlation of 0 8 may be very low if one is verifying a physical law using high quality instruments but may be regarded as very high in the social sciences where there may be a greater contribution from complicating factors Inference editStatistical inference based on Pearson s correlation coefficient often focuses on one of the following two aims One aim is to test the null hypothesis that the true correlation coefficient r is equal to 0 based on the value of the sample correlation coefficient r The other aim is to derive a confidence interval that on repeated sampling has a given probability of containing r Methods of achieving one or both of these aims are discussed below Using a permutation test edit Permutation tests provide a direct approach to performing hypothesis tests and constructing confidence intervals A permutation test for Pearson s correlation coefficient involves the following two steps Using the original paired data xi yi randomly redefine the pairs to create a new data set xi yi where the i are a permutation of the set 1 n The permutation i is selected randomly with equal probabilities placed on all n possible permutations This is equivalent to drawing the i randomly without replacement from the set 1 n In bootstrapping a closely related approach the i and the i are equal and drawn with replacement from 1 n Construct a correlation coefficient r from the randomized data To perform the permutation test repeat steps 1 and 2 a large number of times The p value for the permutation test is the proportion of the r values generated in step 2 that are larger than the Pearson correlation coefficient that was calculated from the original data Here larger can mean either that the value is larger in magnitude or larger in signed value depending on whether a two sided or one sided test is desired Using a bootstrap edit The bootstrap can be used to construct confidence intervals for Pearson s correlation coefficient In the non parametric bootstrap n pairs xi yi are resampled with replacement from the observed set of n pairs and the correlation coefficient r is calculated based on the resampled data This process is repeated a large number of times and the empirical distribution of the resampled r values are used to approximate the sampling distribution of the statistic A 95 confidence interval for r can be defined as the interval spanning from the 2 5th to the 97 5th percentile of the resampled r values Standard error edit If x displaystyle x nbsp and y displaystyle y nbsp are random variables a standard error associated to the correlation in the null case is s r 1 r 2 n 2 displaystyle sigma r sqrt frac 1 r 2 n 2 nbsp where r displaystyle r nbsp is the correlation assumed r 0 and n displaystyle n nbsp the sample size 21 22 Testing using Student s t distribution edit nbsp Critical values of Pearson s correlation coefficient that must be exceeded to be considered significantly nonzero at the 0 05 level For pairs from an uncorrelated bivariate normal distribution the sampling distribution of the studentized Pearson s correlation coefficient follows Student s t distribution with degrees of freedom n 2 Specifically if the underlying variables have a bivariate normal distribution the variablet r s r r n 2 1 r 2 displaystyle t frac r sigma r r sqrt frac n 2 1 r 2 nbsp has a student s t distribution in the null case zero correlation 23 This holds approximately in case of non normal observed values if sample sizes are large enough 24 For determining the critical values for r the inverse function is needed r t n 2 t 2 displaystyle r frac t sqrt n 2 t 2 nbsp Alternatively large sample asymptotic approaches can be used Another early paper 25 provides graphs and tables for general values of r for small sample sizes and discusses computational approaches In the case where the underlying variables are not normal the sampling distribution of Pearson s correlation coefficient follows a Student s t distribution but the degrees of freedom are reduced 26 Using the exact distribution edit For data that follow a bivariate normal distribution the exact density function f r for the sample correlation coefficient r of a normal bivariate is 27 28 29 f r n 2 G n 1 1 r 2 n 1 2 1 r 2 n 4 2 2 p G n 1 2 1 r r n 3 2 2 F 1 1 2 1 2 1 2 2 n 1 1 2 r r 1 displaystyle f r frac n 2 mathrm Gamma n 1 left 1 rho 2 right frac n 1 2 left 1 r 2 right frac n 4 2 sqrt 2 pi operatorname Gamma mathord left n tfrac 1 2 right 1 rho r n frac 3 2 2 mathrm F 1 mathord left tfrac 1 2 tfrac 1 2 tfrac 1 2 2n 1 tfrac 1 2 rho r 1 right nbsp where G displaystyle Gamma nbsp is the gamma function and 2 F 1 a b c z displaystyle 2 mathrm F 1 a b c z nbsp is the Gaussian hypergeometric function In the special case when r 0 displaystyle rho 0 nbsp zero population correlation the exact density function f r can be written as f r 1 r 2 n 4 2 B 1 2 1 2 n 2 displaystyle f r frac left 1 r 2 right frac n 4 2 mathrm B left tfrac 1 2 tfrac 1 2 n 2 right nbsp where B displaystyle mathrm B nbsp is the beta function which is one way of writing the density of a Student s t distribution as above Using the exact confidence distribution edit Confidence intervals and tests can be calculated from a confidence distribution An exact confidence density for r is 30 p r r n n 1 G n 1 2 p G n 1 2 1 r 2 n 1 2 1 r 2 n 2 2 1 r r 1 2 n 2 F 3 2 1 2 n 1 2 1 r r 2 displaystyle pi rho mid r frac nu nu 1 Gamma nu 1 sqrt 2 pi Gamma left nu frac 1 2 right left 1 r 2 right frac nu 1 2 cdot left 1 rho 2 right frac nu 2 2 cdot left 1 r rho right frac 1 2 nu 2 operatorname F left tfrac 3 2 tfrac 1 2 nu tfrac 1 2 tfrac 1 r rho 2 right nbsp where F displaystyle operatorname F nbsp is the Gaussian hypergeometric function and n n 1 gt 1 displaystyle nu n 1 gt 1 nbsp Using the Fisher transformation edit Main article Fisher transformation In practice confidence intervals and hypothesis tests relating to r are usually carried out using the Fisher transformation F displaystyle F nbsp F r 1 2 ln 1 r 1 r artanh r displaystyle F r equiv tfrac 1 2 ln left frac 1 r 1 r right operatorname artanh r nbsp F r approximately follows a normal distribution with mean F r artanh r displaystyle text mean F rho operatorname artanh rho nbsp and standard error SE 1 n 3 displaystyle text SE frac 1 sqrt n 3 nbsp where n is the sample size The approximation error is lowest for a large sample size n displaystyle n nbsp and small r displaystyle r nbsp and r 0 displaystyle rho 0 nbsp and increases otherwise Using the approximation a z score is z x mean SE F r F r 0 n 3 displaystyle z frac x text mean text SE F r F rho 0 sqrt n 3 nbsp under the null hypothesis that r r 0 displaystyle rho rho 0 nbsp given the assumption that the sample pairs are independent and identically distributed and follow a bivariate normal distribution Thus an approximate p value can be obtained from a normal probability table For example if z 2 2 is observed and a two sided p value is desired to test the null hypothesis that r 0 displaystyle rho 0 nbsp the p value is 2 F 2 2 0 028 where F is the standard normal cumulative distribution function To obtain a confidence interval for r we first compute a confidence interval for F r displaystyle rho nbsp 100 1 a CI artanh r artanh r z a 2 SE displaystyle 100 1 alpha text CI operatorname artanh rho in operatorname artanh r pm z alpha 2 text SE nbsp The inverse Fisher transformation brings the interval back to the correlation scale 100 1 a CI r tanh artanh r z a 2 SE tanh artanh r z a 2 SE displaystyle 100 1 alpha text CI rho in tanh operatorname artanh r z alpha 2 text SE tanh operatorname artanh r z alpha 2 text SE nbsp For example suppose we observe r 0 7 with a sample size of n 50 and we wish to obtain a 95 confidence interval for r The transformed value is arctanh r 0 8673 textstyle operatorname arctanh left r right 0 8673 nbsp so the confidence interval on the transformed scale is 0 8673 1 96 47 displaystyle 0 8673 pm frac 1 96 sqrt 47 nbsp or 0 5814 1 1532 Converting back to the correlation scale yields 0 5237 0 8188 In least squares regression analysis editFor more general non linear dependency see Coefficient of determination In a non simple linear model The square of the sample correlation coefficient is typically denoted r2 and is a special case of the coefficient of determination In this case it estimates the fraction of the variance in Y that is explained by X in a simple linear regression So if we have the observed dataset Y 1 Y n displaystyle Y 1 dots Y n nbsp and the fitted dataset Y 1 Y n displaystyle hat Y 1 dots hat Y n nbsp then as a starting point the total variation in the Yi around their average value can be decomposed as follows i Y i Y 2 i Y i Y i 2 i Y i Y 2 displaystyle sum i Y i bar Y 2 sum i Y i hat Y i 2 sum i hat Y i bar Y 2 nbsp where the Y i displaystyle hat Y i nbsp are the fitted values from the regression analysis This can be rearranged to give 1 i Y i Y i 2 i Y i Y 2 i Y i Y 2 i Y i Y 2 displaystyle 1 frac sum i Y i hat Y i 2 sum i Y i bar Y 2 frac sum i hat Y i bar Y 2 sum i Y i bar Y 2 nbsp The two summands above are the fraction of variance in Y that is explained by X right and that is unexplained by X left Next we apply a property of least square regression models that the sample covariance between Y i displaystyle hat Y i nbsp and Y i Y i displaystyle Y i hat Y i nbsp is zero Thus the sample correlation coefficient between the observed and fitted response values in the regression can be written calculation is under expectation assumes Gaussian statistics r Y Y i Y i Y Y i Y i Y i Y 2 i Y i Y 2 i Y i Y i Y i Y Y i Y i Y i Y 2 i Y i Y 2 i Y i Y i Y i Y Y i Y 2 i Y i Y 2 i Y i Y 2 i Y i Y 2 i Y i Y 2 i Y i Y 2 i Y i Y 2 i Y i Y 2 displaystyle begin aligned r Y hat Y amp frac sum i Y i bar Y hat Y i bar Y sqrt sum i Y i bar Y 2 cdot sum i hat Y i bar Y 2 6pt amp frac sum i Y i hat Y i hat Y i bar Y hat Y i bar Y sqrt sum i Y i bar Y 2 cdot sum i hat Y i bar Y 2 6pt amp frac sum i Y i hat Y i hat Y i bar Y hat Y i bar Y 2 sqrt sum i Y i bar Y 2 cdot sum i hat Y i bar Y 2 6pt amp frac sum i hat Y i bar Y 2 sqrt sum i Y i bar Y 2 cdot sum i hat Y i bar Y 2 6pt amp sqrt frac sum i hat Y i bar Y 2 sum i Y i bar Y 2 end aligned nbsp Thus r Y Y 2 i Y i Y 2 i Y i Y 2 displaystyle r Y hat Y 2 frac sum i hat Y i bar Y 2 sum i Y i bar Y 2 nbsp where r Y Y 2 displaystyle r Y hat Y 2 nbsp is the proportion of variance in Y explained by a linear function of X In the derivation above the fact that i Y i Y i Y i Y 0 displaystyle sum i Y i hat Y i hat Y i bar Y 0 nbsp can be proved by noticing that the partial derivatives of the residual sum of squares RSS over b0 and b1 are equal to 0 in the least squares model where RSS i Y i Y i 2 displaystyle text RSS sum i Y i hat Y i 2 nbsp In the end the equation can be written as r Y Y 2 SS reg SS tot displaystyle r Y hat Y 2 frac text SS text reg text SS text tot nbsp where SS reg i Y i Y 2 displaystyle text SS text reg sum i hat Y i bar Y 2 nbsp SS tot i Y i Y 2 displaystyle text SS text tot sum i Y i bar Y 2 nbsp The symbol SS reg displaystyle text SS text reg nbsp is called the regression sum of squares also called the explained sum of squares and SS tot displaystyle text SS text tot nbsp is the total sum of squares proportional to the variance of the data Sensitivity to the data distribution editFurther information Correlation and dependence Sensitivity to the data distribution Existence edit The population Pearson correlation coefficient is defined in terms of moments and therefore exists for any bivariate probability distribution for which the population covariance is defined and the marginal population variances are defined and are non zero Some probability distributions such as the Cauchy distribution have undefined variance and hence r is not defined if X or Y follows such a distribution In some practical applications such as those involving data suspected to follow a heavy tailed distribution this is an important consideration However the existence of the correlation coefficient is usually not a concern for instance if the range of the distribution is bounded r is always defined Sample size edit If the sample size is moderate or large and the population is normal then in the case of the bivariate normal distribution the sample correlation coefficient is the maximum likelihood estimate of the population correlation coefficient and is asymptotically unbiased and efficient which roughly means that it is impossible to construct a more accurate estimate than the sample correlation coefficient If the sample size is large and the population is not normal then the sample correlation coefficient remains approximately unbiased but may not be efficient If the sample size is large then the sample correlation coefficient is a consistent estimator of the population correlation coefficient as long as the sample means variances and covariance are consistent which is guaranteed when the law of large numbers can be applied If the sample size is small then the sample correlation coefficient r is not an unbiased estimate of r 10 The adjusted correlation coefficient must be used instead see elsewhere in this article for the definition Correlations can be different for imbalanced dichotomous data when there is variance error in sample 31 Robustness edit Like many commonly used statistics the sample statistic r is not robust 32 so its value can be misleading if outliers are present 33 34 Specifically the PMCC is neither distributionally robust citation needed nor outlier resistant 32 see Robust statistics Definition Inspection of the scatterplot between X and Y will typically reveal a situation where lack of robustness might be an issue and in such cases it may be advisable to use a robust measure of association Note however that while most robust estimators of association measure statistical dependence in some way they are generally not interpretable on the same scale as the Pearson correlation coefficient Statistical inference for Pearson s correlation coefficient is sensitive to the data distribution Exact tests and asymptotic tests based on the Fisher transformation can be applied if the data are approximately normally distributed but may be misleading otherwise In some situations the bootstrap can be applied to construct confidence intervals and permutation tests can be applied to carry out hypothesis tests These non parametric approaches may give more meaningful results in some situations where bivariate normality does not hold However the standard versions of these approaches rely on exchangeability of the data meaning that there is no ordering or grouping of the data pairs being analyzed that might affect the behavior of the correlation estimate A stratified analysis is one way to either accommodate a lack of bivariate normality or to isolate the correlation resulting from one factor while controlling for another If W represents cluster membership or another factor that it is desirable to control we can stratify the data based on the value of W then calculate a correlation coefficient within each stratum The stratum level estimates can then be combined to estimate the overall correlation while controlling for W 35 Variants editSee also Correlation and dependence Other measures of dependence among random variables Variations of the correlation coefficient can be calculated for different purposes Here are some examples Adjusted correlation coefficient edit The sample correlation coefficient r is not an unbiased estimate of r For data that follows a bivariate normal distribution the expectation E r for the sample correlation coefficient r of a normal bivariate is 36 E r r r 1 r 2 2 n displaystyle operatorname mathbb E left r right rho frac rho left 1 rho 2 right 2n cdots quad nbsp therefore r is a biased estimator of r displaystyle rho nbsp The unique minimum variance unbiased estimator radj is given by 37 r adj r 2 F 1 1 2 1 2 n 1 2 1 r 2 displaystyle r text adj r mathbf 2 F 1 left frac 1 2 frac 1 2 frac n 1 2 1 r 2 right nbsp 1 where r n displaystyle r n nbsp are defined as above 2 F 1 a b c z displaystyle mathbf 2 F 1 a b c z nbsp is the Gaussian hypergeometric function An approximately unbiased estimator radj can be obtained citation needed by truncating E r and solving this truncated equation r E r r adj r adj 1 r adj 2 2 n displaystyle r operatorname mathbb E r approx r text adj frac r text adj left 1 r text adj 2 right 2n nbsp 2 An approximate solution citation needed to equation 2 is r adj r 1 1 r 2 2 n displaystyle r text adj approx r left 1 frac 1 r 2 2n right nbsp 3 where in 3 r n displaystyle r n nbsp are defined as above radj is a suboptimal estimator citation needed clarification needed radj can also be obtained by maximizing log f r radj has minimum variance for large values of n radj has a bias of order 1 n 1 Another proposed 10 adjusted correlation coefficient is citation needed r adj 1 1 r 2 n 1 n 2 displaystyle r text adj sqrt 1 frac 1 r 2 n 1 n 2 nbsp radj r for large values of n Weighted correlation coefficient edit Suppose observations to be correlated have differing degrees of importance that can be expressed with a weight vector w To calculate the correlation between vectors x and y with the weight vector w all of length n 38 39 Weighted mean m x w i w i x i i w i displaystyle operatorname m x w frac sum i w i x i sum i w i nbsp Weighted covariance cov x y w i w i x i m x w y i m y w i w i displaystyle operatorname cov x y w frac sum i w i cdot x i operatorname m x w y i operatorname m y w sum i w i nbsp Weighted correlation corr x y w cov x y w cov x x w cov y y w displaystyle operatorname corr x y w frac operatorname cov x y w sqrt operatorname cov x x w operatorname cov y y w nbsp Reflective correlation coefficient edit The reflective correlation is a variant of Pearson s correlation in which the data are not centered around their mean values citation needed The population reflective correlation is corr r X Y E X Y E X 2 E Y 2 displaystyle operatorname corr r X Y frac operatorname mathbb E X Y sqrt operatorname mathbb E X 2 cdot operatorname mathbb E Y 2 nbsp The reflective correlation is symmetric but it is not invariant under translation corr r X Y corr r Y X corr r X b Y corr r X a b Y a 0 b gt 0 displaystyle operatorname corr r X Y operatorname corr r Y X operatorname corr r X bY neq operatorname corr r X a bY quad a neq 0 b gt 0 nbsp The sample reflective correlation is equivalent to cosine similarity r r x y x i y i x i 2 y i 2 displaystyle rr xy frac sum x i y i sqrt sum x i 2 sum y i 2 nbsp The weighted version of the sample reflective correlation is r r x y w w i x i y i w i x i 2 w i y i 2 displaystyle rr xy w frac sum w i x i y i sqrt sum w i x i 2 sum w i y i 2 nbsp Scaled correlation coefficient edit Main article Scaled correlation Scaled correlation is a variant of Pearson s correlation in which the range of the data is restricted intentionally and in a controlled manner to reveal correlations between fast components in time series 40 Scaled correlation is defined as average correlation across short segments of data Let K displaystyle K nbsp be the number of segments that can fit into the total length of the signal T displaystyle T nbsp for a given scale s displaystyle s nbsp K round T s displaystyle K operatorname round left frac T s right nbsp The scaled correlation across the entire signals r s displaystyle bar r s nbsp is then computed as r s 1 K k 1 K r k displaystyle bar r s frac 1 K sum limits k 1 K r k nbsp where r k displaystyle r k nbsp is Pearson s coefficient of correlation for segment k displaystyle k nbsp By choosing the parameter s displaystyle s nbsp the range of values is reduced and the correlations on long time scale are filtered out only the correlations on short time scales being revealed Thus the contributions of slow components are removed and those of fast components are retained Pearson s distance edit A distance metric for two variables X and Y known as Pearson s distance can be defined from their correlation coefficient as 41 d X Y 1 r X Y displaystyle d X Y 1 rho X Y nbsp Considering that the Pearson correlation coefficient falls between 1 1 the Pearson distance lies in 0 2 The Pearson distance has been used in cluster analysis and data detection for communications and storage with unknown gain and offset 42 The Pearson distance defined this way assigns distance greater than 1 to negative correlations In reality both strong positive correlation and negative correlations are meaningful so care must be taken when Pearson distance is used for nearest neighbor algorithm as such algorithm will only include neighbors with positive correlation and exclude neighbors with negative correlation Alternatively an absolute valued distance d X Y 1 r X Y displaystyle d X Y 1 rho X Y nbsp can be applied which will take both positive and negative correlations into consideration The information on positive and negative association can be extracted separately later Circular correlation coefficient edit Further information Circular statistics For variables X x1 xn and Y y1 yn that are defined on the unit circle 0 2p it is possible to define a circular analog of Pearson s coefficient 43 This is done by transforming data points in X and Y with a sine function such that the correlation coefficient is given as r circular i 1 n sin x i x sin y i y i 1 n sin x i x 2 i 1 n sin y i y 2 displaystyle r text circular frac sum i 1 n sin x i bar x sin y i bar y sqrt sum i 1 n sin x i bar x 2 sqrt sum i 1 n sin y i bar y 2 nbsp where x displaystyle bar x nbsp and y displaystyle bar y nbsp are the circular means of X and Y This measure can be useful in fields like meteorology where the angular direction of data is important Partial correlation edit Main article Partial correlation If a population or data set is characterized by more than two variables a partial correlation coefficient measures the strength of dependence between a pair of variables that is not accounted for by the way in which they both change in response to variations in a selected subset of the other variables Decorrelation of n random variables editMain article Decorrelation It is always possible to remove the correlations between all pairs of an arbitrary number of random variables by using a data transformation even if the relationship between the variables is nonlinear A presentation of this result for population distributions is given by Cox amp Hinkley 44 A corresponding result exists for reducing the sample correlations to zero Suppose a vector of n random variables is observed m times Let X be a matrix where X i j displaystyle X i j nbsp is the jth variable of observation i Let Z m m displaystyle Z m m nbsp be an m by m square matrix with every element 1 Then D is the data transformed so every random variable has zero mean and T is the data transformed so all variables have zero mean and zero correlation with all other variables the sample correlation matrix of T will be the identity matrix This has to be further divided by the standard deviation to get unit variance The transformed variables will be uncorrelated even though they may not be independent D X 1 m Z m m X displaystyle D X frac 1 m Z m m X nbsp T D D T D 1 2 displaystyle T D D mathsf T D frac 1 2 nbsp where an exponent of 1 2 represents the matrix square root of the inverse of a matrix The correlation matrix of T will be the identity matrix If a new data observation x is a row vector of n elements then the same transform can be applied to x to get the transformed vectors d and t d x 1 m Z 1 m X displaystyle d x frac 1 m Z 1 m X nbsp t d D T D 1 2 displaystyle t d D mathsf T D frac 1 2 nbsp This decorrelation is related to principal components analysis for multivariate data Software implementations editR s statistics base package implements the correlation coefficient with cor x y or with the P value also with cor test x y The SciPy Python library via pearsonr x y The Pandas Python library implements Pearson correlation coefficient calculation as the default option for the method pandas DataFrame corr Wolfram Mathematica via the Correlation function or with the P value with CorrelationTest The Boost C library via the correlation coefficient function Excel has an in built correl array1 array2 function for calculating the pearson s correlation coefficient See also edit nbsp Mathematics portalAnscombe s quartet Association statistics Coefficient of colligation Yule s Q Yule s Y Concordance correlation coefficient Correlation and dependence Correlation ratio Disattenuation Distance correlation Maximal information coefficient Multiple correlation Normally distributed and uncorrelated does not imply independent Odds ratio Partial correlation Polychoric correlation Quadrant count ratio RV coefficient Spearman s rank correlation coefficientFootnotes edit Also known as Pearson s r the Pearson product moment correlation coefficient PPMCC the bivariate correlation 1 or simply the unqualified correlation coefficient 2 As early as 1877 Galton was using the term reversion and the symbol r for what would become regression 3 4 5 References edit SPSS Tutorials Pearson Correlation Correlation Coefficient Simple Definition Formula Easy Steps Statistics How To Galton F 5 19 April 1877 Typical laws of heredity Nature 15 388 389 390 492 495 512 514 532 533 Bibcode 1877Natur 15 492 doi 10 1038 015492a0 S2CID 4136393 In the Appendix on page 532 Galton uses the term reversion and the symbol r Galton F 24 September 1885 The British Association Section II Anthropology Opening address by Francis Galton F R S etc President of the Anthropological Institute President of the Section Nature 32 830 507 510 Galton F 1886 Regression towards mediocrity in hereditary stature Journal of the Anthropological Institute of Great Britain and Ireland 15 246 263 doi 10 2307 2841583 JSTOR 2841583 Pearson Karl 20 June 1895 Notes on regression and inheritance in the case of two parents Proceedings of the Royal Society of London 58 240 242 Bibcode 1895RSPS 58 240P Stigler Stephen M 1989 Francis Galton s account of the invention of correlation Statistical Science 4 2 73 79 doi 10 1214 ss 1177012580 JSTOR 2245329 Analyse mathematique sur les probabilites des erreurs de situation d un point Mem Acad Roy Sci Inst France Sci Math et Phys in French 9 255 332 1844 via Google Books Wright S 1921 Correlation and causation Journal of Agricultural Research 20 7 557 585 a b c d e Real Statistics Using Excel Basic Concepts of Correlation retrieved 22 February 2015 Weisstein Eric W Statistical Correlation Wolfram MathWorld Retrieved 22 August 2020 Moriya N 2008 Noise related multivariate optimal joint analysis in longitudinal stochastic processes In Yang Fengshan ed Progress in Applied Mathematical Modeling Nova Science Publishers Inc pp 223 260 ISBN 978 1 60021 976 4 Garren Steven T 15 June 1998 Maximum likelihood estimation of the correlation coefficient in a bivariate normal model with missing data Statistics amp Probability Letters 38 3 281 288 doi 10 1016 S0167 7152 98 00035 2 2 6 Pearson Correlation Coefficient r STAT 462 Retrieved 10 July 2021 Introductory Business Statistics The Correlation Coefficient r opentextbc ca Retrieved 21 August 2020 Rodgers Nicewander 1988 Thirteen ways to look at the correlation coefficient PDF The American Statistician 42 1 59 66 doi 10 2307 2685263 JSTOR 2685263 Schmid John Jr December 1947 The relationship between the coefficient of correlation and the angle included between regression lines The Journal of Educational Research 41 4 311 313 doi 10 1080 00220671 1947 10881608 JSTOR 27528906 Rummel R J 1976 Understanding Correlation ch 5 as illustrated for a special case in the next paragraph Buda Andrzej Jarynowski Andrzej December 2010 Life Time of Correlations and its Applications Wydawnictwo Niezalezne pp 5 21 ISBN 9788391527290 a b Cohen J 1988 Statistical Power Analysis for the Behavioral Sciences 2nd ed Bowley A L 1928 The Standard Deviation of the Correlation Coefficient Journal of the American Statistical Association 23 161 31 34 doi 10 2307 2277400 ISSN 0162 1459 JSTOR 2277400 Derivation of the standard error for Pearson s correlation coefficient Cross Validated Retrieved 30 July 2021 Rahman N A 1968 A Course in Theoretical Statistics Charles Griffin and Company 1968 Kendall M G Stuart A 1973 The Advanced Theory of Statistics Volume 2 Inference and Relationship Griffin ISBN 0 85264 215 6 Section 31 19 Soper H E Young A W Cave B M Lee A Pearson K 1917 On the distribution of the correlation coefficient in small samples Appendix II to the papers of Student and R A Fisher A co operative study Biometrika 11 4 328 413 doi 10 1093 biomet 11 4 328 Davey Catherine E Grayden David B Egan Gary F Johnston Leigh A January 2013 Filtering induces correlation in fMRI resting state data NeuroImage 64 728 740 doi 10 1016 j neuroimage 2012 08 022 hdl 11343 44035 PMID 22939874 S2CID 207184701 Hotelling Harold 1953 New Light on the Correlation Coefficient and its Transforms Journal of the Royal Statistical Society Series B Methodological 15 2 193 232 doi 10 1111 j 2517 6161 1953 tb00135 x JSTOR 2983768 Kenney J F Keeping E S 1951 Mathematics of Statistics Vol Part 2 2nd ed Princeton NJ Van Nostrand Weisstein Eric W Correlation Coefficient Bivariate Normal Distribution Wolfram MathWorld Taraldsen Gunnar 2020 Confidence in Correlation ResearchGate doi 10 13140 RG 2 2 23673 49769 Lai Chun Sing Tao Yingshan Xu Fangyuan Ng Wing W Y Jia Youwei Yuan Haoliang Huang Chao Lai Loi Lei Xu Zhao Locatelli Giorgio January 2019 A robust correlation analysis framework for imbalanced and dichotomous data with uncertainty PDF Information Sciences 470 58 77 doi 10 1016 j ins 2018 08 017 S2CID 52878443 a b Wilcox Rand R 2005 Introduction to robust estimation and hypothesis testing Academic Press Devlin Susan J Gnanadesikan R Kettenring J R 1975 Robust estimation and outlier detection with correlation coefficients Biometrika 62 3 531 545 doi 10 1093 biomet 62 3 531 JSTOR 2335508 Huber Peter J 2004 Robust Statistics Wiley page needed Katz Mitchell H 2006 Multivariable Analysis A Practical Guide for Clinicians 2nd Edition Cambridge University Press ISBN 978 0 521 54985 1 ISBN 0 521 54985 X Hotelling H 1953 New Light on the Correlation Coefficient and its Transforms Journal of the Royal Statistical Society Series B Methodological 15 2 193 232 doi 10 1111 j 2517 6161 1953 tb00135 x JSTOR 2983768 Olkin Ingram Pratt John W March 1958 Unbiased Estimation of Certain Correlation Coefficients The Annals of Mathematical Statistics 29 1 201 211 doi 10 1214 aoms 1177706717 JSTOR 2237306 Re Compute a weighted correlation sci tech archive net Weighted Correlation Matrix File Exchange MATLAB Central Nikolic D Muresan RC Feng W Singer W 2012 Scaled correlation analysis a better way to compute a cross correlogram PDF European Journal of Neuroscience 35 5 1 21 doi 10 1111 j 1460 9568 2011 07987 x PMID 22324876 S2CID 4694570 Fulekar Ed M H 2009 Bioinformatics Applications in Life and Environmental Sciences Springer pp 110 ISBN 1 4020 8879 5 Immink K Schouhamer Weber J October 2010 Minimum Pearson distance detection for multilevel channels with gain and or offset mismatch IEEE Transactions on Information Theory 60 10 5966 5974 CiteSeerX 10 1 1 642 9971 doi 10 1109 tit 2014 2342744 S2CID 1027502 Retrieved 11 February 2018 Jammalamadaka S Rao SenGupta A 2001 Topics in circular statistics New Jersey World Scientific p 176 ISBN 978 981 02 3778 3 Retrieved 21 September 2016 Cox D R Hinkley D V 1974 Theoretical Statistics Chapman amp Hall Appendix 3 ISBN 0 412 12420 3 External links edit nbsp Wikiversity has learning resources about Linear correlation cocor comparingcorrelations org A free web interface and R package for the statistical comparison of two dependent or independent correlations with overlapping or non overlapping variables Correlation nagysandor eu an interactive Flash simulation on the correlation of two normally distributed variables Correlation coefficient calculator hackmath net Linear regression Critical values for Pearson s correlation coefficient PDF frank mtsu edu dkfuller large table Guess the Correlation A game where players guess how correlated two variables in a scatter plot are in order to gain a better understanding of the concept of correlation Retrieved from https en wikipedia org w index php title Pearson correlation coefficient amp oldid 1183832791, wikipedia, wiki, book, books, library,

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