# r matrix product element by element

I have 3 matrices:

`````` A (n by K),

B (L by m) and

C (L by K)
``````

and would like to produce a 4th matrix

``````D (n by m)
``````

with elements

``````D(i,j) = sum(B[,i,drop=FALSE]%*%A[j,,drop=FALSE] * C)
``````

(Notice that B[,i,drop=FALSE]%*%A[j,,drop=FALSE] is the product of a (L by 1) matrix with a (1 by K_ matrix, and hence is (L by K), as C is. "sum" sums all elements of the resulting matrix)

One way of doing this is creating a grid as expand.grid(1:n,1:m) and calculating D(.,.) for each of these elements. Any ideas of how to do it faster in R?

Thanks!

-
A and B don't look conformable to me. –  Ari B. Friedman Nov 24 '12 at 18:00
Am I missing something or B[,i] is L by 1 and A[j,] is 1 by K? (So that the product is L by K?) –  madness Nov 24 '12 at 18:04
Note that I'm not multiplying A by B –  madness Nov 24 '12 at 18:06
B[,i] and A[j,] are vectors. Perhaps you want B[,i,drop=FALSE] and A[j,,drop=FALSE]. Or use an outer product instead of matrix multiplication. –  Matthew Lundberg Nov 24 '12 at 19:10
Thanks, it makes sense. I edit the post. –  madness Nov 24 '12 at 21:12

``````library(reshape2)
library(plyr)
m <- 100;n <- 100;K <- 100;L <- 100
A <- matrix(sample(1:n),nrow=n,ncol=K)
B <- matrix(sample(1:L),nrow=L,ncol=m)
C <- matrix(sample(1:L),nrow=L,ncol=K)

h <- ddply(expand.grid(1:m,1:n),.(Var1,Var2),
f <- function(i) {sum(B[,i\$Var1,drop=FALSE]%*%A[i\$Var2,,drop=FALSE]*C)})
D <- acast(h, Var2 ~ Var1)
``````
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Thanks, This works, but do you think it is faster than using a regular apply on expand.grid(1:m,1:n)? Many thanks –  madness Nov 25 '12 at 1:55