# Efficiently extracting pairwise correlations in R

This seems like it should be straightforward but I have a data frame and need to extract the correlation of the scores for each possible pair of `id` across `trial` (in other words, compare score of id 1 on trial 10 to id 2 on trial 10, id 1 on trial 10 to id 3 on trial 10, and so on. An example data frame is as follows.

``````id <- c('1','1','1','2', '2', '2', '3', '3', '3')
trial <- c('10','11','12','10', '11', '12', '10', '11', '12')
score<- c('634', '981','101', '621', '31', '124', '827', '404', '92')
d <- data.frame(id, trial, score)
``````

d

`````` id trial score
1    10   634
1    11   981
1    12   101
2    10   621
2    11    31
2    12   124
3    10   827
3    11   404
3    12    92
``````

The result should be a new matrix with correlations of all possible combinations. Ostensibly it's for evaluating score reliability across ids.

The data is about 10000 lines long which causes R to choke up. I've looked in the forums here and tried to figure it out using `comb` or `outer` but got confused by the syntax. Any help would be much appreciated!

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Based on @Roland's idea, but using R base function `xtabs`

``````> d\$score <- as.numeric(as.character(d\$score))
> cor(xtabs(score ~ trial + id, data=d))
1           2         3
1  1.00000000 -0.02568439 0.5295394
2 -0.02568439  1.00000000 0.8344046
3  0.52953942  0.83440458 1.0000000
``````
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Never used xtabs before, this seems very handy! – amurphy Oct 31 '13 at 16:24

One way to achieve this could be by using data.table. You can use the following

``````library(data.table)
d.t <- data.table(d)
setkey(d.t,"trial","id")
``````

And then something like this should help.

``````temp <- cor(as.vector(d.t[J("10","1")]\$score),as.vector(d.t[J("10","2")]\$score))
``````

Post this could put a loop around this or use sapply and then rbind the results into a matrix/data frame

HTH

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If you don't have too many ids, I would reshape the data here and use that `cor` accepts a data.frame as input:

``````d\$score <- as.numeric(as.character(d\$score))
library(reshape2)
d1 <- dcast(d,trial~id)
cor(d1[,-1])
#            1           2         3
#1  1.00000000 -0.02568439 0.5295394
#2 -0.02568439  1.00000000 0.8344046
#3  0.52953942  0.83440458 1.0000000
``````
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