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Possible Duplicate:
In R, correlation test between two columns, for each of the groups in a third column

My data frame (g) contains 2 columns with continuous data and other columns with categorical data. I want to test for correlations between the 2 continuous variables, in different groups which are defined by a third column. g (157X3000) look like:

     Geno          GDW         GN        M1     M2      M3
1 SB002XSB012 -17.1597630   52.31961    G/G    C/C     T/T
3 SB002XSB044  -3.6537657   53.81305    G/G    C/G     G/G
4 SB002XSB051  -7.8411596   58.05924    A/G    C/C     G/T
5 SB002XSB067   2.8412103   30.85074    A/G    G/G     G/T
6 SB002XSB073 -16.0789550  -10.09913    A/A    C/G     G/G
7 SB002XSB095   0.1759709   10.28837    A/A    G/G     T/T

I'm looking for the correlations between GDW and GN in each of the groups as defined by each M. I tried :

q<- function (x) {  
    r<-function(x) { 
        if ((nrow(x[[1]][1]))>2)  
          cor.test(x[[1]][1],x[[1]][2],use="pairwise.complete.obs")[3:4] else Na  
    cor<- sapply(spl,r)  

all.cor<- apply(g[,4:ncol(g)],2,q)

and got:

Error in if ((nrow(x[[1]][1])) > 2) cor.test(x[[1]][1], x[[1]][2], use = "pairwise.complete.obs")[3:4] else Na : 
  argument is of length zero
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migrated from Dec 25 '12 at 19:18

This question came from our site for people interested in statistics, machine learning, data analysis, data mining, and data visualization.

marked as duplicate by Matthew Lundberg, Roman Luštrik, Matt Parker, mnel, Graviton Jan 7 '13 at 7:10

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

See the answer that I entered to the identical question, linked above. – Matthew Lundberg Dec 25 '12 at 19:44
up vote 5 down vote accepted

or if you use the plyr package you could say (copying Antoine's sample data)

g <- data.frame(col1=rnorm(100, 1, 1), col2=rnorm(100, 10, 3), col3=c(rep("a", 50), rep("b", 50)))

co <- ddply(g, .(col3), function(adf) cor(adf[,1], adf[,2]))

to give a data.frame looking something like...

    col3         V1
  1    a -0.1697979
  2    b  0.1660783

EDIT: adding looping for multiple columns *EDIT2: removing ridiculously complicated expression!*

g <- data.frame(col1=rnorm(100, 1, 1),
            col2=rnorm(100, 10, 3),
            col3=sample(c('a','b','c'), 100, replace=TRUE),
            col4=sample(c('a','b','c'), 100, replace=TRUE),
            col5=sample(c('a','b','c'), 100, replace=TRUE),
            col6=sample(c('a','b','c'), 100, replace=TRUE))
for (i in 3:6) {
  co <- ddply(g, i, function(adf) cor(adf[,1], adf[,2]))
  names(co) <- c('variable',paste('CorCol',i, sep='-'))
  if(exists('odf')) { 
    odf <- merge(odf, co, by='variable', all=TRUE)
  } else {
    odf <- co

Results are in data.frame odf with a column for each correlation so looks like:

> odf
  variable    CorCol-3    CorCol-4    CorCol-5    CorCol-6
1        a  0.29596471 -0.12278082  0.02184259  0.11972933
2        b -0.11793616  0.08827011  0.11030097 -0.03682823
3        c -0.09552299  0.12951251 -0.03855727 -0.03082486
share|improve this answer
+1, thanks for the example with plyr. I really should start using it. It makes for a lot less typing. – Antoine Vernet Dec 25 '12 at 15:53
Thanks, tried this and it works for 1 column, I want to use multiple column to define the groups. I tried: q<- function (x) { daply(g1[,2:3], .(x),function (y) cor (y$"X11_GDW_BPH",y$"X11_GN_BPH")) } all.cor<- apply(g1[,4:3000],2,q) and get error: Error in eval(expr, envir, enclos) : object 'x' not found – Imri Dec 25 '12 at 20:40
Can you clarify what you mean by "use multiple column" please? Are the columns independent or can they be pasted together? e.g. paste(g[,4],g[,5],g[,6], sep='-') – Sean Dec 25 '12 at 21:07
I want to test each column separately, and to see how the groups in each column affect the correlation of the first 2. – Imri Dec 26 '12 at 4:34
Thank, is seems to work. I appreciate your help. – Imri Dec 26 '12 at 15:12

You can do it easily using a for loop (this should work fine unless you have a very high number of levels in your categorical column).

Here is a snippet of code that should be easily adapted to your data (you only need to change the names of the columns to make them correspond to the one in your data frame):

g <- data.frame(col1=rnorm(100, 1, 1), col2=rnorm(100, 10, 3), col3=c(rep("a", 50), rep("b", 50)))

co <- c()
for (i in levels(g$col3)){
    tmp <- cor(g[g[,"col3"]==i,"col1"], g[g[,"col3"]==i,"col2"])
    co <- c(co, tmp)

The co object contains the correlations for the dataframe in the order in which the levels appear in levels(g[,"col3"]) which holds the categorical variable.

share|improve this answer

For the toy-dataframe

g <- data.frame(col1=rnorm(100, 1, 1), 
                col2=rnorm(100, 10, 3), 
                col3=gl(2, 50),
                col4=gl(4, 25))

I think this is the most simple way to do this:

by(g, g$col3, function(x) cor(x$col1, x$col2))

And the same for several columns:

for (i in 3:ncol(g)) print(by(g, g[i], function(x) cor(x$col1, x$col2)))
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