Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I have a set of data such as;

       name      Exp1Res1   Exp1Res2   Exp1Res3   ExpRes1   Exp2Res2   Exp3Res3

[1]     ID1         5          7            9          7          9       2 

[2]     ID2         6          4            2          9          5       1

[3]     ID3         4          9            9          9          11      2

I need to determine the correlation between experiment 1 and 2 for each row. As there are actually 37 columns and 100,000 rows in my dataset (FullSet), my original solution of looping through is far too slow (refer below), so I wanted to optimize.

My original solution was;

df <- data.frame(matrix(ncol = 5, nrow = dim(FullSet)[1]))
for (i in  seq(1, dim(FullSet)[1]))  
    pears=cor(as.numeric(t(FullSet[i,2:19])),as.numeric(t(FullSet[i,20:37])), method="pearson")
    spear=cor(as.numeric(t(FullSet[i,2:19])),as.numeric(t(FullSet[i,20:37])), method="pearson")

I feel something like this should work;

FullSet$pearson<-cor(as.numeric(t(FullSet[,2:19])),as.numeric(t(FullSet[,20:37])), method="pearson")

but I don't know if/how to reference just the current row in the transpose -

 t(FullSet[,2:19]) - which should read something like t(FullSet[<currow>,2:19]). 

Help would be appreciated - I don't know if my approach is even correct.

Output should look like (Results are not correct - for example only)

       name      Pearson     Spearman

[1]     ID1         0.8          .75 

[2]     ID2         0.9          .8

[3]     ID3         0.85         .7
share|improve this question

1 Answer 1

up vote 4 down vote accepted

what about bringing it to the format:

ID  EXP  Res
1    1    .
1    1    .
1    2    .
1    2    .

by using reshape and then letting plyr do the work:

ddply(df, .(ID, EXP), summarize, cor(...))

would that be a possibility? if you do it for spearman and for perason seperately.

share|improve this answer
I have marked this as the answer, as it does work and is an alternative (just melt and ddply), however it is not faster than the loop method. –  statler Dec 19 '11 at 23:05

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.