# How to flatten a list to a list without coercion?

I am trying to achieve the functionality similar to unlist, with the exception that types are not coerced to a vector, but the list with preserved types is returned instead. For instance:

``````flatten(list(NA, list("TRUE", list(FALSE), 0L))
``````

should return

``````list(NA, "TRUE", FALSE, 0L)
``````

``````c(NA, "TRUE", "FALSE", "0")
``````

which would be returned by `unlist(list(list(NA, list("TRUE", list(FALSE), 0L))`.

As it is seen from the example above, the flattening should be recursive. Is there a function in standard R library which achieves this, or at least some other function which can be used to easily and efficiently implement this?

UPDATE: I don't know if it is clear from the above, but non-lists should not be flattened, i.e. `flatten(list(1:3, list(4, 5)))` should return `list(c(1, 2, 3), 4, 5)`.

-
 What should `flatten( list(1:3, list(1:3, 'foo')) )` return? – Tommy Nov 15 '11 at 20:18 `list(c(1, 2, 3), c(1, 2, 3), 'foo')`. Explanation: `1:3` is not a list, so it should not be flatten. – leden Nov 16 '11 at 19:25

Interesting non-trivial problem!

MAJOR UPDATE With all that's happened, I've rewrote the answer and removed some dead ends. I also timed the various solutions on different cases.

Here's the first, rather simple but slow, solution:

``````flatten1 <- function(x) {
y <- list()
rapply(x, function(x) y <<- c(y,x))
y
}
``````

`rapply` lets you traverse a list and apply a function on each leaf element. Unfortunately, it works exactly as `unlist` with the returned values. So I ignore the result from `rapply` and instead I append values to the variable `y` by doing `<<-`.

Growing `y` in this manner is not very efficient (it's quadratic in time). So if there are many thousands of elements this will be very slow.

A more efficient approach is the following, with simplifications from @JoshuaUlrich:

``````flatten2 <- function(x) {
len <- sum(rapply(x, function(x) 1L))
y <- vector('list', len)
i <- 0L
rapply(x, function(x) { i <<- i+1L; y[[i]] <<- x })
y
}
``````

Here I first find out the result length and pre-allocate the vector. Then I fill in the values. As you can will see, this solution is much faster.

Here's a version of @JoshO'Brien great solution based on `Reduce`, but extended so it handles arbitrary depth:

``````flatten3 <- function(x) {
repeat {
if(!any(vapply(x, is.list, logical(1)))) return(x)
x <- Reduce(c, x)
}
}
``````

Now let the battle begin!

``````# Check correctness on original problem
x <- list(NA, list("TRUE", list(FALSE), 0L))
dput( flatten1(x) )
#list(NA, "TRUE", FALSE, 0L)
dput( flatten2(x) )
#list(NA, "TRUE", FALSE, 0L)
dput( flatten3(x) )
#list(NA_character_, "TRUE", FALSE, 0L)

# Time on a huge flat list
x <- as.list(1:1e5)
#system.time( flatten1(x) )  # Long time
system.time( flatten2(x) )  # 0.39 secs
system.time( flatten3(x) )  # 0.04 secs

# Time on a huge deep list
x <-'leaf'; for(i in 1:11) { x <- list(left=x, right=x, value=i) }
#system.time( flatten1(x) ) # Long time
system.time( flatten2(x) )  # 0.05 secs
system.time( flatten3(x) )  # 1.28 secs
``````

...So what we observe is that the `Reduce` solution is faster when the depth is low, and the `rapply` solution is faster when the depth is large!

As correctness goes, here are some tests:

``````> dput(flatten1( list(1:3, list(1:3, 'foo')) ))
list(1L, 2L, 3L, 1L, 2L, 3L, "foo")
> dput(flatten2( list(1:3, list(1:3, 'foo')) ))
list(1:3, 1:3, "foo")
> dput(flatten3( list(1:3, list(1:3, 'foo')) ))
list(1L, 2L, 3L, 1:3, "foo")
``````

Unclear what result is desired, but I lean towards the result from `flatten2`...

-
 I came up with something similar to your update, but perhaps less complicated: `y <- vector("list", sum(rapply(x,length))); i <- 1` then `rapply(x, function(z) {y[[i]] <<- z; i <<- i+1})`. It's about as fast as your updated solution. – Joshua Ulrich Nov 15 '11 at 17:22 Silly me, yes, that's much easier - I didn't think `y[[i]] <<- z` would work so I didn't even try it! – Tommy Nov 15 '11 at 17:30 @Tommy -- I just stole your most recent version of flatten, adding a line that takes care of the corner case you identified. Hope you don't mind, and feel free to edit your own version accordingly. Thanks! – Josh O'Brien Nov 15 '11 at 18:24 +1 -- Don't know how I didn't already upvote this post. This should put you up top so that your excellent comparisons get max visibility. Plus, I definitely prefer the output of `flatten2`. – Josh O'Brien Nov 15 '11 at 22:43 Thanks. You can eliminate flatten1. Not only it is the slowest one, but it also doesn't preserve non-lists (i.e. 1:5 flattens while it should not). – leden Nov 16 '11 at 19:34
show 1 more comment

For lists that are only a few nestings deep, you could use `Reduce()` and `c()` to do something like the following. Each application of `c()` removes one level of nesting. (For fully general solution, see EDITs below.)

``````L <- (list(NA, list("TRUE", list(FALSE), 0L)))
Reduce(c, Reduce(c, L))
[[1]]
[1] NA

[[2]]
[1] "TRUE"

[[3]]
[1] FALSE

[[4]]
[1] 0

# TIMING TEST
x <- as.list(1:4e3)
system.time(flatten(x))   # Using the improved version
# user  system elapsed
# 0.14    0.00    0.13
system.time(Reduce(c, x))
# user  system elapsed
# 0.04    0.00    0.03
``````

EDIT Just for fun, here's a version of @Tommy's version of @JoshO'Brien's solution that does work for already flat lists. FURTHER EDIT Now @Tommy's solved that problem as well, but in a cleaner way. I'll leave this version in place.

``````flatten <- function(x) {
x <- list(x)
repeat {
x <- Reduce(c, x)
if(!any(vapply(x, is.list, logical(1)))) return(x)
}
}

flatten(list(3, TRUE, 'foo'))
# [[1]]
# [1] 3
#
# [[2]]
# [1] TRUE
#
# [[3]]
# [1] "foo"
``````
-
 +1 for nice use of `Reduce`! ...But it doesn't seem to handle `flatten(list(3, TRUE, 'foo'))` – Tommy Nov 15 '11 at 17:51 I am more concerned about implementing it recursively, in order to wor for non constant depth lists. Is there a function which can be used to detect if a list is flattened? – leden Nov 15 '11 at 17:54 @leden -- You can test whether a list is flat with `!any(sapply(L, class)=="list")`, which will evaluate to `TRUE` for fully flattened lists. – Josh O'Brien Nov 15 '11 at 18:00 @leden - I added a variant that does that. – Tommy Nov 15 '11 at 18:05 @Tommy -- Why'd you have to go ahead and ruin a perfectly elegant solution ;). If the function might be passed already flat lists, you'd need to either: (a) check for that case in advance; or (b) pre-emptively wrap every list passed to it, like this: `Reduce(c, list(x))`, where in your example, `x <- list(3, TRUE, 'foo')`. – Josh O'Brien Nov 15 '11 at 18:09
show 4 more comments

How about this? It builds off Josh O'Brien's solution but does the recursion with a `while` loop instead using `unlist` with `recursive=FALSE`.

``````flatten4 <- function(x) {
while(any(vapply(x, is.list, logical(1)))) {
# this next line gives behavior like Tommy's answer;
# removing it gives behavior like Josh's
x <- lapply(x, function(x) if(is.list(x)) x else list(x))
x <- unlist(x, recursive=FALSE)
}
x
}
``````

Keeping the commented line in gives results like this (which Tommy prefers, and so do I, for that matter).

``````> x <- list(1:3, list(1:3, 'foo'))
> dput(flatten4(x))
list(1:3, 1:3, "foo")
``````

Output from my system, using Tommy's tests:

``````dput(flatten4(foo))
#list(NA, "TRUE", FALSE, 0L)

# Time on a long
x <- as.list(1:1e5)
system.time( x2 <- flatten2(x) )  # 0.48 secs
system.time( x3 <- flatten3(x) )  # 0.07 secs
system.time( x4 <- flatten4(x) )  # 0.07 secs
identical(x2, x4) # TRUE
identical(x3, x4) # TRUE

# Time on a huge deep list
x <-'leaf'; for(i in 1:11) { x <- list(left=x, right=x, value=i) }
system.time( x2 <- flatten2(x) )  # 0.05 secs
system.time( x3 <- flatten3(x) )  # 1.45 secs
system.time( x4 <- flatten4(x) )  # 0.03 secs
identical(x2, unname(x4)) # TRUE
identical(unname(x3), unname(x4)) # TRUE
``````

EDIT: As for getting the depth of a list, maybe something like this would work; it gets the index for each element recursively.

``````depth <- function(x) {
foo <- function(x, i=NULL) {
if(is.list(x)) { lapply(seq_along(x), function(xi) foo(x[[xi]], c(i,xi))) }
else { i }
}
flatten4(foo(x))
}
``````

It's not super fast but it seems to work fine.

``````x <- as.list(1:1e5)
system.time(d <- depth(x)) # 0.327 s

x <-'leaf'; for(i in 1:11) { x <- list(left=x, right=x, value=i) }
system.time(d <- depth(x)) # 0.041s
``````

I'd imagined it being used this way:

``````> x[[ d[[5]] ]]
[1] "leaf"
> x[[ d[[6]] ]]
[1] 1
``````

But you could also get a count of how many nodes are at each depth too.

``````> table(sapply(d, length))

1    2    3    4    5    6    7    8    9   10   11
1    2    4    8   16   32   64  128  256  512 3072
``````
-
 Welcome to the party! Definitely a +1... – Tommy Nov 15 '11 at 21:04 +1 for continuing to extend this. Now if only we had some way to quickly assess the depth of lists... Any ideas? – Josh O'Brien Nov 15 '11 at 23:55 @JoshO'Brien: See edit for depth idea. It works but it's not great. Any suggestions? – Aaron Nov 16 '11 at 15:42 Hi Aaron. Nice solution, but I agree it's not ideal. It would be nice to find something that always ran faster than the worst case `flatten4` timings. My two thoughts are: "I wonder if the phylogenetics folks already have something like this in a package", and "Folks who work with parsers could do this in a snap". – Josh O'Brien Nov 16 '11 at 17:01 I played for a few minutes with the string resulting from `deparse(L)`, i.e. `"list(NA, list(\"TRUE\", list(FALSE), 0L))"`, but realized I'm in over my head/don't have the time. My basic idea was to run through it once, counting every occurrence of the substring `list(` as a `+1`, and every matching right paren `)` as a `-1`. `max(cumsum())` or some equivalent would get you the maximum depth. Seems like a sound approach with a perhaps monstrous regexp needed for the implementation! This might be a good SO question for one of us to ask at some point... – Josh O'Brien Nov 16 '11 at 17:06
show 1 more comment

Edited to address a flaw pointed out in the comments. Sadly, it just makes it even less efficient. Ah well.

Another approach, although I'm not sure it will be more efficient than anything @Tommy has suggested:

``````l <- list(NA, list("TRUE", list(FALSE), 0L))

flatten <- function(x){
obj <- rapply(x,identity,how = "unlist")
cl <- rapply(x,class,how = "unlist")
len <- rapply(x,length,how = "unlist")
cl <- rep(cl,times = len)
mapply(function(obj,cl){rs <- as(obj,cl); rs}, obj, cl,
SIMPLIFY = FALSE, USE.NAMES = FALSE)
}

> flatten(l)
[[1]]
[1] NA

[[2]]
[1] "TRUE"

[[3]]
[1] FALSE

[[4]]
[1] 0
``````
-
 Yeah, it's a bit (~3x) slower, but +1 for interesting solution! – Tommy Nov 15 '11 at 17:42 Hmm. I fails for `flatten( list(1:3, list(1:3, 'foo')) )` – Tommy Nov 15 '11 at 20:24 @Tommy Good catch. I edited to address the problem, although it will make the performance even worse that before, sadly. – joran Nov 15 '11 at 22:51