# Extract colnames from a nested list of data.frames

I have a nested list of data.frames, what is the easiest way to get the column names of all data.frames?

Example:

``````d = data.frame(a = 1:3, b = 1:3, c = 1:3)

l = list(a = d, list(b = d, c = d))
``````

Result:

``````\$a
 "a" "b" "c"

\$b
 "a" "b" "c"

\$c
 "a" "b" "c"
``````

There are already a couple of answers. But let me leave another approach. I used `rapply2()` in the rawr package.

``````devtools::install_github('raredd/rawr')
library(rawr)
library(purrr)

rapply2(l = l, FUN = colnames) %>%
flatten

\$a
 "a" "b" "c"

\$b
 "a" "b" "c"

\$c
 "a" "b" "c"
``````

Here is a base R solution.

You can define a customized function to flatten your nested list (which can deal nested list of any depths, e.g., more than 2 levels), i.e.,

``````flatten <- function(x){
islist <- sapply(x, class) %in% "list"
r <- c(x[!islist], unlist(x[islist],recursive = F))
if(!sum(islist))return(r)
flatten(r)
}
``````

and then use the following code to achieve the colnames

``````out <- Map(colnames,flatten(l))
``````

such that

``````> out
\$a
 "a" "b" "c"

\$b
 "a" "b" "c"

\$c
 "a" "b" "c"
``````

Example with a deeper nested list

``````l <- list(a = d, list(b = d, list(c = list(e = list(f= list(g = d))))))
> l
\$a
a b c
1 1 1 1
2 2 2 2
3 3 3 3

[]
[]\$b
a b c
1 1 1 1
2 2 2 2
3 3 3 3

[][]
[][]\$c
[][]\$c\$e
[][]\$c\$e\$f
[][]\$c\$e\$f\$g
a b c
1 1 1 1
2 2 2 2
3 3 3 3
``````

and you will get

``````> out
\$a
 "a" "b" "c"

\$b
 "a" "b" "c"

\$c.e.f.g
 "a" "b" "c"
``````

Here is an attempt to do this as Vectorized as possible,

``````i1 <- names(unlist(l, TRUE, TRUE))
# "a.a1" "a.a2" "a.a3" "a.b1" "a.b2" "a.b3" "a.c1" "a.c2" "a.c3" "b.a1" "b.a2" "b.a3" "b.b1" "b.b2" "b.b3" "b.c1" "b.c2" "b.c3" "c.a1" "c.a2" "c.a3" "c.b1" "c.b2" "c.b3" "c.c1" "c.c2" "c.c3"
i2 <- names(split(i1, gsub('\\d+', '', i1)))
# "a.a" "a.b" "a.c" "b.a" "b.b" "b.c" "c.a" "c.b" "c.c"
``````

We can now split `i2` on everything before the dot, which will give,

``````split(i2, sub('\\..*', '', i2))

#    \$a
#     "a.a" "a.b" "a.c"

#    \$b
#     "b.a" "b.b" "b.c"

#    \$c
#     "c.a" "c.b" "c.c"
``````

To get them fully cleaned, we need to loop over and apply a simple regex,

`````` lapply(split(i2, sub('\\..*', '', i2)), function(i)sub('.*\\.', '', i))
``````

which gives,

``````\$a
 "a" "b" "c"

\$b
 "a" "b" "c"

\$c
 "a" "b" "c"
``````

The Code compacted

``````i1 <- names(unlist(l, TRUE, TRUE))
i2 <- names(split(i1, gsub('\\d+', '', i1)))
final_res <- lapply(split(i2, sub('\\..*', '', i2)), function(i)sub('.*\\.', '', i))
``````

Try this

``````d = data.frame(a = 1:3, b = 1:3, c = 1:3)

l = list(a = d, list(b = d, c = d))

foo <- function(x, f){
if (is.data.frame(x)) return(f(x))
lapply(x, foo, f = f)
}

foo(l, names)
``````

The crux here is that `data.frames` actually are special list, so it's important what to test for.

Small explanation: what needs to be done here is a recursion, since with every element you might look at either a dataframe, so you want to decide if you apply the `names` or go deeper into the recursion and call `foo` again.

• The problem is that foo(l, names) also returns a nested list – user680111 Jan 20 at 9:57
• I don't. Not sure, what you did differently. – Georgery Jan 20 at 10:03
• You can add `unlist()` at the end, but I am not sure if this is what you want. – Georgery Jan 20 at 10:06

First create l1, a nested list with only the colnames

``````l1 <- lapply(l, function(x) if(is.data.frame(x)){
list(colnames(x)) #necessary to list it for the unlist() step afterwards
}else{
lapply(x, colnames)
})
``````

Then unlist l1

``````unlist(l1, recursive=F)
``````

Here is one way using `purrr` functions `map_depth` and `vec_depth`

``````library(purrr)

return_names <- function(x) {
if(inherits(x, "list"))
return(map_depth(x, vec_depth(x) - 2, names))
else return(names(x))
}

map(l, return_names)

#\$a
# "a" "b" "c"

#[]
#[]\$b
# "a" "b" "c"

#[]\$c
# "a" "b" "c"
``````