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I'm trying to create a data.frame that takes different values depending on the value of a reference data.frame. I only know how to do this with a "for loop", but have been advised to avoid for loops in R... and my actual data have ~500,000 rows x ~200 columns.

a <-,1,0.5),5,2,dimnames=list(c(1:5),c("a","b"))))
b <- data.frame(v1=c(2,10,12,5,11,3,4,14,2,13),v2=c("a","b","b","a","b","a","a","b","a","b"))
c <-,5,2))

for (i in 1:5){
  for(j in 1:2){
      c[i,j] <- mean(b$v1[b$v2==colnames(a)[j]])
    } else {
      c[i,j]= mean(b$v1)

I create data.frame "c" based on the value in each cell, and the corresponding column name, of data.frame "a". Is there another way to do this? Indexing? Using data.table? Maybe apply functions? Any and all help is greatly appreciated!

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2 Answers 2

up vote 1 down vote accepted
(a == 0) * mean(b$v1) + t(t(a) * c(tapply(b$v1, b$v2, mean)))

Run in pieces to understand what's happening. Also, note that this assumes ordered names in a (and 0's and 1's as entries in it, as per OP).

An alternative to a bunch of t's as above is using mapply (this assumes a is a data.frame or data.table and not a matrix, while the above doesn't care):

(a == 0) * mean(b$v1) + mapply(`*`, a, tapply(b$v1, b$v2, mean))
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I tried but the results are not the same as c. Any idea ? – dickoa Jul 17 '13 at 20:17
@dickoa thanks, fixed – eddi Jul 17 '13 at 20:22
@dickoa I have a feeling there is a much simpler way of multiplying those two, than the above – eddi Jul 17 '13 at 20:22
Thank you @eddi, but I'm getting something strange... I would like the average for the factor level = colname(a) from data.frame "b" to be used when a cell in "a" is equal to 1. Your code seems to alternate between the average for factor level "a" and factor level "b" without keeping track of the column name from data.frame "a". – seapen Jul 17 '13 at 20:27
It's y vert good example of vectorization in R though the removing the call to t would be nice. +1 – dickoa Jul 17 '13 at 20:27
#subsetting a matrix is faster
res <- as.matrix(a)

#calculate fill-in values outside the loop
in1 <- mean(b$v1)
in2 <- sapply(colnames(a),function(i) mean(b$v1[b$v2==i]))

#loop over columns and use a vectorized approach 
for (i in seq_len(ncol(res))) {
  res[,i] <- ifelse(res[,i]==0, in1, in2[i])
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+1 Nice approach but ifelse is known to be usually slower than traditional if...else but it looks more compact – dickoa Jul 17 '13 at 20:19
I don't understand your comment. ifelse is vectorized, if is not. ifelse is faster than if plus a loop. – Roland Jul 18 '13 at 7:01
You are right, I'm sorry if vectorized it's faster but in non vectorized situation it's actually slower check this… – dickoa Jul 18 '13 at 7:49
Well, of course. But how is that related to my answer? – Roland Jul 18 '13 at 8:38
Not related to your answer but I just did a small confusion (vectorization and not) because of a vague souvenir of this thread. In this case, the use of ifelse is the way to go. Sorry – dickoa Jul 18 '13 at 13:23

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