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How best can I apply a function to the edges of a multidimensional array in R, without hard-coding the number of dimensions in advance. In a two dimensional array, I could, for instance:

myarray[1,] = f(myarray[1,])
myarray[M,] = f(myarray[M,])
myarray[,1] = f(myarray[,1])
myarray[,N] = f(myarray[,N])

But what if I want to have a function do this for an array of any dimension? In particular, how can I handle the indexing in a relatively painless way? (Assume that have multiple applications of the function taking place at corners is not a problem.)

If I flatten the array, I can do this, but I'd prefer a vectorized approach. Alternatively, I could just hard code this for arrays of every dimension up to, some dimension and fail on higher, but I'd prefer something prettier, if possible.

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2 Answers 2

Here's a solution that should be able to handle an arbitrary number of dimensions. The basic idea is that

  1. For each dimension, apply() is called with the function of choice
  2. Each result of that function is turned into a list of length one
  3. This should make apply() return a list of results for each dimension
  4. The first and last list items for each dimension are stored in the results vector

This would be very time consuming for arrays with large dimensions and/or time consuming functions of choice, since the function is applied to a potentially large number of values that are not used. But it should allow for arbitrary functions and arbitrary results of those functions. Here it goes:

## Set up array

## Determine number of dimensions in array

## Set up results vector (a list)

## Iterating over the number of dimensions, apply a function
for(ii in seq_len(ndim)){
## Store first and last results in myAns vector
## If result is length 1, only store the single result
  } else {
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Thanks, that's not a bad idea. –  Rob Lachlan Mar 22 '12 at 4:20

Did you have something like this in mind?

> ary <- array(1:27, c(3,3,3))
> apply(ary, MARGIN = 3, function(x) {
+             lastColMean <- mean(x[, ncol(x)])
+             lastRowMean <- mean(x[nrow(x), ])
+             data.frame(lastColMean, lastRowMean)
+          })
  lastColMean lastRowMean
1           8           6

  lastColMean lastRowMean
1          17          15

  lastColMean lastRowMean
1          26          24
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It looks like there might be a way to use "apply" to solve the problem I have (see the question), but it's not obvious to me how. Note that I'm interested in how to have it work for an arbitrary number of dimensions. –  Rob Lachlan Mar 22 '12 at 4:19
Which dimensions specifically? You can control that through MARGIN (it will flip through the "3rd dimension" of the array). In function(x) you will have to write which statistics you want to calculate from your (now 2D) table. –  Roman Luštrik Mar 22 '12 at 10:24

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