10

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.

2
  • 1
    May be you need to specify classes = "data.frame" in rapply function? – DrDom Jul 31 '13 at 13:07
  • 1
    Hi @DrDom, i tried specifying classes = "data.frame" but no success. Anyway thanks. – foehn Aug 1 '13 at 3:46
8

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")

giving:

$a
  Time demand 
    22     89 

$b
  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)

giving:

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:

$a
  Time demand 
    22     89 

$b
  Time demand 
    22     89 

ADDED: second approach

1
  • 2
    I changed solution 2 to: recurse <- function (L, f) { if (inherits(L, "data.frame")) f(L) else if (!is.list(L) && length(L) == 1) f(L) else lapply(L, recurse, f) } to make it a bit more robust. It should prevent infinite recursion when something non-data.frame ends up in your input. – Bob Jansen Jun 6 '18 at 17:04
3

Update June 2020:

You can now also use rrapply in the rrapply-package, (an extended version of base rapply). Setting classes = "data.frame" applies the f function to data.frame objects as a whole (instead of recursing into the individual columns):

library(rrapply)

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

## apply f to data.frames 
rrapply(L, f = colSums, classes = "data.frame")
#> $a
#>   Time demand 
#>     22     89 
#> 
#> $b
#>   Time demand 
#>     22     89

## apply f to individual columns of data.frames
rrapply(L, f = function(x, .xname) if(.xname == "demand") scale(x) else x)
#> $a
#>   Time     demand
#> 1    1 -1.4108974
#> 2    2 -0.9789900
#> 3    3  0.8998070
#> 4    4  0.2519460
#> 5    5  0.1655645
#> 6    7  1.0725699
#> 
#> $b
#>   Time     demand
#> 1    1 -1.4108974
#> 2    2 -0.9789900
#> 3    3  0.8998070
#> 4    4  0.2519460
#> 5    5  0.1655645
#> 6    7  1.0725699
0
0

Handling list computation at a specific depth:

recursive_lapply <- function (data, fun, depth = 1L) {
  stopifnot(inherits(data, "list"))
  stopifnot(depth >= 1)
  f <- function(data, fun, where = integer()) {
    if (length(where) == depth) {
      fun(data)
    } else {
      res <- lapply(seq_along(data), function(i) {f(data[[i]], fun, where = c(where, i))})
      names(res) <- names(data)
      res
    }
  }
  f(data, fun)
}

example computation:

d <- list(
  A = list(a = list(
    a1 = data.table::data.table(x = 11:15, y = 10:14),
    a2 = data.table::data.table(x = 1:5, y = 0:4)
  )),
  B = list(b = list(
    b1 = data.table::data.table(x = 7, y = 8),
    b2 = data.table::data.table(x = 9, y = 10)
  ))
)

> recursive_lapply(d, function(data) data[, "z":= x + y], 3)
$A
$A$a
$A$a$a1
    x  y  z
1: 11 10 21
2: 12 11 23
3: 13 12 25
4: 14 13 27
5: 15 14 29

$A$a$a2
   x y z
1: 1 0 1
2: 2 1 3
3: 3 2 5
4: 4 3 7
5: 5 4 9

$B
$B$b
$B$b$b1
   x y  z
1: 7 8 15

$B$b$b2
   x  y  z
1: 9 10 19

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