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I hope to obtain the percentage of rows with a maximum value of 1 in a 4-dimensional array. I can obtain that information using an apply function for individual values of the 4th dimension, then use cbind to combine all of the output. However, the number of values in the 4th dimension may vary. Is there an efficient way to obtain the output in the desired format without using cbind?

Below is functional code that returns the desired information as separate vectors for each level of the 4th dimension of an array.

set.seed(9345)

A <- 8
B <- 2
C <- 5
D <- 2  # the value of D might change

y2 <- array(rbinom(A*B*C*D, 1, 0.4), dim = c(A, B, C, D))

pA <- colMeans(apply(y2[,,,1], c(1,3), max))
pB <- colMeans(apply(y2[,,,2], c(1,3), max))

pp <- cbind(pA, pB)
pp

#        pA    pB
# [1,] 0.750 0.875
# [2,] 0.625 0.250
# [3,] 0.375 1.000
# [4,] 0.375 0.500
# [5,] 0.625 0.750

Is there an easy way to obtain the equivalent of pp without using cbind on the output pA and pB (maybe a one-liner that incorporates the apply and colMeans functions)? If the number of values in the 4th dimension (D) change then the number of vectors that must be combined with cbind would vary.

Thank you for any suggestions.

share|improve this question
    
The code you've posted doesn't work without editing. (You set up an object y, but then operate on y2.) If you do y2 <- y, then the resultant matrix isn't as shown. (It instead matches the one in my answer below). – Josh O'Brien Apr 24 '12 at 23:44
    
Yes, I saw that and fixed it. Sorry about that. – Mark Miller Apr 24 '12 at 23:50
up vote 3 down vote accepted

This should be equivalent, and simpler to boot:

colMeans(apply(y2[,,,], c(1,3,4), max))
#       [,1]  [,2]
# [1,] 0.750 0.875
# [2,] 0.625 0.250
# [3,] 0.375 1.000
# [4,] 0.375 0.500
# [5,] 0.625 0.750
share|improve this answer
    
Thanks for the answer. I am thinking if I use c(1,3,4) I do not need the t(): colMeans(apply(y2[,,,], c(1,3,4), max)). – Mark Miller Apr 25 '12 at 0:00
    
@MarkMiller -- Thanks for catching that (fixed now). (It was left over from the experiments I'd run when I was puzzling over why c(1,3,4) didn't match your posted results!) – Josh O'Brien Apr 25 '12 at 0:45

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