Hi I have a function in R that I'm trying to optimize for performance. I need to vectorize a for loop. My problem is the slightly convoluted data structure and the way I need to perform lookups using the 'which' command.

Lets say we are dealing with 5 elements (1,2,3,4,5), the 10x2 matrix pairs is a combination of all unique pairs the 5 elements (i.e. (1,2), (1,3),(1,4) ....(4,5)). all_prods is a 10x1 matrix that I need to look up using the pairs while iterating through all the 5 elements.

So for 1, I need to index rows 1, 2, 3, 4 (pairs 1,2 1,3 1,4 and 1,5) from all_prods and so on for 1, 2, 3, 4, 5.

I have only recently switched to R from matlab so would really appreciate any help.

```
foo <- function(AA , BB , CC ){
pa <- AA*CC;
pairs <- t(combn(seq_len(length(AA)),2));
all_prods <- pa[pairs[,1]] * pa[pairs[,2]];
result <- matrix(0,1,length(AA));
# WANT TO VECTORIZE THIS BLOCK
for(st in seq(from=1,to=length(AA))){
result[st] <- sum(all_prods[c(which(pairs[,1]==st), which(pairs[,2]==st))])*BB[st];
}
return(result);
}
AA <- seq(from=1,to=5); BB<-seq(from=11,to=15); CC<-seq(from=21,to=25);
results <- foo(AA,BB,CC);
#final results is [7715 164208 256542 348096 431250]
```

I want to convert the for loop into a vectorised version. Instead of looping through every element st, I'd like to do it in one command that gives me a results vector (rather than building it up element by element)

Thanks in advance.

`combn`

and`t`

are pretty greedy. Have you tried profiling your code? – Roman Luštrik Jun 26 '12 at 9:56`sapply`

solution but it's pretty comparable to what you achieved (kudos to pre-allocating your object). After profiling it would seem the majority of the time is spent in`which`

.`Rprof("vekt.txt"); results <- foo(AA,BB,CC); Rprof(); summaryRprof("vekt.txt")`

– Roman Luštrik Jun 26 '12 at 10:10