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If I have an array A

A <- array(0, c(4, 3, 5))
for(i in 1:5) {
  set.seed(i)
  A[, , i] <- matrix(rnorm(12), 4, 3)
}

and if I have matrix B

set.seed(6)
B <- matrix(rnorm(12), 4, 3)

The code to subtract B from the each matrix of the array A would be:

d<-array(0, c(4,3,5))
for(i in 1:5){
  d[,,i]<-A[,,i]-B
}

However, what would be the code to perform the same calculation using a function from "apply" family?

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3 Answers 3

up vote 8 down vote accepted

This is what sweep is for.

sweep(A, 1:2, B)
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many thanks for this info –  Newbie_R Jun 26 '13 at 17:34
    
Yet another powerful command with an utterly non-intuitive name (to non-statisticians)... I love R! Name is dissimilar to 'apply'. –  smci Mar 27 '14 at 15:25

Maybe not very intuitive:

A[] <- apply(A, 3, `-`, B)
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Tnx for valuable reply. Please, tell me what we actually say to R to do while keeping the A[]? –  Newbie_R Jun 26 '13 at 17:44
2  
It means to assign into the elements of A within the brackets. You may recall that when indexing, a missing dimension means "select all elements in that dimension", for example mat[1, ] means "select the 1st row and all columns of matrix mat". This convention also holds when doing single-dimensional indexing, so [] means "select all elements". What it does here is that it assigns into A while keeping its dimensions intact. This is necessary here because apply by itself will return a 2-dimensional structure, while we want a 3-dimensional result. –  Hong Ooi Jun 26 '13 at 17:49
    
Great explanation, many thanks :) –  Newbie_R Jun 26 '13 at 18:06

Because you are looping on the last array dimension, you can simply do:

d <- A - as.vector(B)

and it will be much faster. It is the same idea as when you subtract a vector from a matrix: the vector is recycled so it is subtracted to each column.

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+1 this is a nice fact –  Matthew Plourde Jun 26 '13 at 17:46
    
I needed to loop over entire dimensions of the array. Maybe I introduced some misunderstanding because in the first post I wrote set.seed(5) giving numerical differences only for the last dimension of the array. However, I edited the post (e.g. set.seed(i)) and probably make what I am intended to do more intuitive and clear. However, many thanks for reply! –  Newbie_R Jun 26 '13 at 18:01
    
@Newbie_R: I don't think you realize my answer is giving the same result as yours. –  flodel Jun 26 '13 at 18:05
    
You are right! I obtained different results because I have checked your suggestion with a wrong matrix B...my fault. Tnx –  Newbie_R Jun 26 '13 at 18:14

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