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i have a nested list whose fundamental element is data frames, and i want to traverse this list recursively to do some computation of each data frame, finally to get a nested list of results in the same structure as the input. I know "rapply" is exactly for such kind of task, but i met a problem that, rapply actually goes even deeper than i want, i.e. it decomposes every data frame and applies to each column instead (because a data frame itself is a list in R).

One workaround i can think about is to convert each data frame to matrix, but it will force to uniform the data types, so i don't like it really. I want to know if there is any way to control the recursive depth of rapply. Any idea? Thanks.

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May be you need to specify classes = "data.frame" in rapply function? – DrDom Jul 31 '13 at 13:07
Hi @DrDom, i tried specifying classes = "data.frame" but no success. Anyway thanks. – foehn Aug 1 '13 at 3:46
up vote 3 down vote accepted

1. wrap in proto

When creating your list structure try wrapping the data frames in proto objects:

> library(proto)
> L <- list(a = proto(DF = BOD), b = proto(DF = BOD))
> rapply(L, f = function(.) colSums(.$DF), how = "replace")
  Time demand 
    22     89 

  Time demand 
    22     89 

Wrap the result of your function in a proto object too if you want to further rapply it;

? f <- function(.) proto(result = colSums(.$DF))
> out <- rapply(L, f = f, how = "replace")
> str(out)
List of 2
 $ a:proto object 
 .. $ result: Named num [1:2] 22 89 
 ..  ..- attr(*, "names")= chr [1:2] "Time" "demand" 
 $ b:proto object 
 .. $ result: Named num [1:2] 22 89 
 ..  ..- attr(*, "names")= chr [1:2] "Time" "demand" 

2. write your own rapply alternative

recurse <- function (L, f) {
    if (inherits(L, "data.frame")) f(L)
    else lapply(L, recurse, f)

L <- list(a = BOD, b = BOD)
recurse(L, colSums)

This gives:

  Time demand 
    22     89 

  Time demand 
    22     89 

ADDED: second approach

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