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# Significance test on the difference of two correlation coefficient

How do you test if two correlation coefficients are signficantly different - in GNU R?

That is, if the effect between the same variables (e.g., age and income) is different in two different populations (subsamples).

For background information see How do I compare correlation coefficients of the same variables across different groups and Significance test on the difference of Spearman's correlation coefficient (both at CrossValidated).

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Here is a ready-to-use function for GNU R if you want to compare multiple pairs of coefficients (based on Significance of the difference between two correlation coefficients and Quantitative Analysis and Politics, PDF):

``````cor.diff.test = function(r1, r2, n1, n2, alternative = c("two.sided", "less", "greater")) {

Z1 = 0.5 * log( (1+r1)/(1-r1) )
Z2 = 0.5 * log( (1+r2)/(1-r2) )

diff = Z1 - Z2
SEdiff = sqrt( 1 / (n1 - 3) + 1 / (n2 - 3))
diff.Z = diff / SEdiff

if (alternative == "less") {
return(pnorm(diff.Z, lower.tail=F))
} else if (alternative == "greater") {
return(pnorm(-diff.Z, lower.tail=F))
} else if (alternative == "two.sided") {
return(2 * pnorm( abs(diff.Z), lower.tail=F))
} else {
warning(paste("Invalid alterantive", alternative), domain=NA)
return(NA)
}
}
``````
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There is alraedy a `cor.test` function in the base `stats` package, so you may avoid using this name. – juba Jan 25 '13 at 9:50
Very good point - edited to cor.diff.test() – BurninLeo Jan 25 '13 at 9:51
Please check out the revision 3 (stackoverflow.com/revisions/14519007/3) of this posting for hyperlinks to online calculators and the original formula - just in case you only want to compare few pairs of correlation coefficients. For another user these hyperlinks looked like advertising and this user removed what I considered useful information. – BurninLeo Jan 30 '13 at 21:28
Note: There is also a function `r.test()` in the `psych` package suitable for this task. – BurninLeo Sep 22 '14 at 10:35

The package cocor provides functions to test if two independent or dependent correlation coefficients are significantly different. There is also a web interface for the package available: http://comparingcorrelations.org

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