I have a 100column table for which I would like to run pairwise partial correlations, controlling by the 100th column's variable using the pcor.test
function from the ppcor
package. Is there any partial correlation function in R that I can use the returns something like rcorr
, taking the pairwise correlations of the whole matrix but only controlling by one variable?
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1 Answer
It sounds like for an ncolumn matrix you want to output a (n1) x (n1) matrix of the pairwise correlations of the first n1 columns, controlling for the last (using the pcor.test
function from the ppcor
package).
You could do this with the sapply
function, looping through each column and computing its correlation to all other columns with pcor.test
:
# Sample dataset with 5 columns
set.seed(144)
dat < matrix(rnorm(1000), ncol=5)
# Compute the 4x4 correlation matrix, controlling for the fifth column
library(ppcor)
sapply(1:(ncol(dat)1), function(x) sapply(1:(ncol(dat)1), function(y) {
if (x == y) 1
else pcor.test(dat[,x], dat[,y], dat[,ncol(dat)])$estimate
}))
# [,1] [,2] [,3] [,4]
# [1,] 1.000000000 0.01885158 0.06037621 0.004032437
# [2,] 0.018851576 1.00000000 0.09560611 0.097152907
# [3,] 0.060376208 0.09560611 1.00000000 0.105123093
# [4,] 0.004032437 0.09715291 0.10512309 1.000000000

Thanks for the elegant solution. I was wondering if the result needs to be corrected for multiple correlation with something like Bonferroni.– RosarioCommented May 23 at 6:13

@Rosario This solution is just giving correlation estimates instead of pvalues. If you were trying to interpret a set of pvalues you would want to use sequential Bonferroni or similar.– josliberCommented May 28 at 16:52


@Rosario I would suggest you ask a followup question to get that code! I'm not quite sure, though stat.ethz.ch/Rmanual/Rdevel/library/stats/html/p.adjust.html looks very promising.– josliberCommented 2 days ago