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I am calculating sums of matrix columns to each group, where the corresponding group values are contained in matrix columns as well. At the moment I am using a loop as follows:

index <- matrix(c("A","A","B","B","B","B","A","A"),4,2)
x <- matrix(1:8,4,2)

for (i in 1:2) {
  tapply(x[,i], index[,i], sum)

At the end of the day I need the following result:

   1  2
A  3  15
B  7  11

Is there a way to do this using matrix operations without a loop? On top, the real data is large (e.g. 500 x 10000), therefore it has to be fast.

Thanks in advance.

share|improve this question
Tapply takes a list of indices for just this purpose – mdsumner Oct 26 '11 at 21:50
@mdsumner I could be wrong, but I don't think that either tapply or aggregate directly do what the OP is asking for. – joran Oct 26 '11 at 22:06
you're right, it's not tabulated like I was thinking, it's just parallel tapplys I guess – mdsumner Oct 27 '11 at 1:18

Here are a couple of solutions:

# 1
ag <- aggregate(c(x), data.frame(index = c(index), col = c(col(x))), sum)
xt <- xtabs(x ~., ag)

# 2
m <- mapply(rowsum,,
dimnames(m) <- list(levels(factor(index)), 1:ncol(index))

The second only works if every column of index has at least one of each level and also requires that there be at least 2 levels; however, its faster.

share|improve this answer

This is ugly and works but there's a much better way to do it that is more generalizable. Just getting the ball rolling.

data.frame("col1"=as.numeric(table(rep(index[,1], x[,1]))),
           "col2"=as.numeric(table(rep(index[,2], x[,2]))), 
share|improve this answer

I still suspect there's a better option, but this seems reasonably fast actually:

index <- matrix(sample(LETTERS[1:4],size = 500*1000,replace = TRUE),500,10000)
x <- matrix(sample(1:10,500*10000,replace = TRUE),500,10000)

rs <- matrix(NA,4,10000)
rownames(rs) <- LETTERS[1:4]
for (i in LETTERS[1:4]){
    tmp <- x
    tmp[index != i] <- 0
    rs[i,] <- colSums(tmp)

It runs in ~0.8 seconds on my machine. I upped the number of categories to four and scaled it up to the size data you have. But I don't having to copy x each time.

You can get clever with matrix multiplication, but I think you still have to do one row or column at a time.

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