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I've got 2 data frames - learn data with L rows and test data with T rows.

I want to compute a L*T matrix with distances (euclidean, manhattan, cosine...) between according elements.

Here is my take:

distance2 <- function (x1, x2) {
            temp <- x1 - x2
            sum(temp * temp)

m <- matrix(0,nrow(learnData),nrow(testData))
for(td in 1:nrow(testData)) {
    for(ld in 1:nrow(learnData)) {
        m[ld,td] <- distance2(testData[td,],learnData[ld,])                 

I think this can be done in a more compact, "R" way. Any ideas? Thanks.

share|improve this question
For euclidean, you better use rdist from the fields package. It is faster than dist and more adapted to your requirements (two data frames). See – flodel Sep 16 '12 at 21:02
Thanks, I tried and it works exactly as I want. I chose proxy package which does the same thing, but has lots of different measures already implemented. – Uros K Sep 16 '12 at 22:00

1 Answer 1

up vote 4 down vote accepted

Two options spring to mind:

  1. Use the proxy package which has many of these dissimilarity coefficients already coded and can compute this for two data frames separately
  2. The analogue package, which has function distance() which can compute the Euclidean and Manhattan measures for you on two data frames (but not the cosine distance).
share|improve this answer
Proxy package is great, really lots of distances and similarity measures. And it does what I want, thanks. – Uros K Sep 16 '12 at 21:59

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