94

The tm package extends c so that, if given a set of PlainTextDocuments it automatically creates a Corpus. Unfortunately, it appears that each PlainTextDocument must be specified separately.

e.g. if I had:

foolist <- list(a, b, c); # where a,b,c are PlainTextDocument objects

I'd do this to get a Corpus:

foocorpus <- c(foolist[[1]], foolist[[2]], foolist[[3]]);

I have a list of lists of 'PlainTextDocuments that looks like this:

> str(sectioned)
List of 154
 $ :List of 6
  ..$ :Classes 'PlainTextDocument', 'TextDocument', 'character'  atomic [1:1] Developing assessment models   Developing models
  .. .. ..- attr(*, "Author")= chr "John Smith"
  .. .. ..- attr(*, "DateTimeStamp")= POSIXlt[1:1], format: "2013-04-30 12:03:49"
  .. .. ..- attr(*, "Description")= chr(0) 
  .. .. ..- attr(*, "Heading")= chr "Research Focus"
  .. .. ..- attr(*, "ID")= chr(0) 
  .. .. ..- attr(*, "Language")= chr(0) 
  .. .. ..- attr(*, "LocalMetaData")=List of 4
  .. .. .. ..$ foo           : chr "bar"
  .. .. .. ..$ classification: chr "Technician"
  .. .. .. ..$ team          : chr ""
  .. .. .. ..$ supervisor    : chr "Bill Jones"
  .. .. ..- attr(*, "Origin")= chr "Smith-John_e.txt"

#etc., all sublists have 6 elements

So, to get all my PlainTextDocuments into a Corpus, this would work:

sectioned.Corpus <- c(sectioned[[1]][[1]], sectioned[[1]][[2]], ..., sectioned[[154]][[6]])

Can anyone suggest an easier way, please?

ETA: foo<-unlist(foolist, recursive=FALSE) produces a flat list of PlainTextDocuments, which still leaves me with the problem of feeding a list element by element to c

4 Answers 4

115

I expect that unlist(foolist) will help you. It has an option recursive which is TRUE by default.

So unlist(foolist, recursive = FALSE) will return the list of the documents, and then you can combine them by:

do.call(c, unlist(foolist, recursive=FALSE))

do.call just applies the function c to the elements of the obtained list

3
  • 1
    Also consider using NCmisc::Unlist() for unlisting beyond the first level.
    – Megatron
    Commented Nov 20, 2018 at 19:34
  • @zx8754 for the very similar large list, after importing a json file, I'm applying the same code, but I get the error "unlist arguments imply differing number of rows: 1, 0", which I understand, but i thought the code deals with lists of different levels. Any ideas? Beginner R user here... Thanks in advance for any help!
    – choabf
    Commented Feb 18, 2022 at 15:42
  • @choabf, I advise you to create a new question, where put an example of your data and code you used.
    – DrDom
    Commented Feb 19, 2022 at 16:11
34

Here's a more general solution for when lists are nested multiple times and the amount of nesting differs between elements of the lists:

 flattenlist <- function(x){  
  morelists <- sapply(x, function(xprime) class(xprime)[1]=="list")
  out <- c(x[!morelists], unlist(x[morelists], recursive=FALSE))
  if(sum(morelists)){ 
    Recall(out)
  }else{
    return(out)
  }
}
6
  • 4
    just to make this a bit more comprehensible I'll just point out that identifying lists using class(xprime)[1]=="list") is necessary (rather than using is.list) when your nested objects are of classes that inherit from lists (i.e. note that is.list(data.frame(3)) evaluates to TRUE)
    – Michael
    Commented Mar 24, 2017 at 1:33
  • 2
    also note that this doesn't retain the order of the original structure
    – Michael
    Commented Mar 24, 2017 at 1:35
  • 1
    probably just replace out <- c( with an mapply statement that takes x and morelists as arguments then unlists only for elements where morelists is TRUE
    – Michael
    Commented Mar 19, 2021 at 16:00
  • 1
    or replace the first two lines with a single lapply that combines testing and unlisting
    – Michael
    Commented Mar 19, 2021 at 16:00
  • 2
    Very useful: My usecase is map(some_nested_list, flattenlist) %>% bind_rows() to produce a tibble.
    – shosaco
    Commented Dec 16, 2021 at 8:46
12

Here's another method that worked for my list of lists.

df <- as.data.frame(do.call(rbind, lapply(foolist, as.data.frame)))

Or take a look at new functions in tidyr which work well.

rectangle a nested list into a tidy tibble

rectangling

    lst <-  list(
      list(
        age = 23,
        gender = "Male",
        city = "Sydney"
      ),
      list(
        age = 21,
        gender = "Female",
        city = "Cairns"
      )
    )
      
    tib <- tibble(lst)  %>% 
      unnest_wider(lst)

df <- as.data.frame(tib)
3
  • Thanks for sharing. unnest_wider from the tidyr package worked perfectly. The other code you posted gave me an error message "Error in match.names(clabs, names(xi)) : names do not match previous names" --> The data I am working with is downloaded as a JSON from Facebook. It is highly nested. Not all lists in the list are equally long. The data structure also varies between downloaded files.
    – Simone
    Commented Nov 3, 2021 at 9:25
  • 1
    @Simone, I think you should post a new question with a simple replication of your data, then some can try to help you. SO doesn't like questions within questions
    – Zeus
    Commented Nov 8, 2021 at 0:51
  • I did. Wanted to point out that there are "normally" nested lists and highly nested lists. For the latter the tidyr package is useful. --> hence the comment and not a new question.
    – Simone
    Commented Nov 8, 2021 at 9:30
0

Use Reduce:

flatt <- 
\ (xss, flatf = c) 
    xss |> Reduce (\(a,b) flatf (a,b) , x = _)

Demo:

list (list (1,0,3),list (2,4),list (3,6,5)) -> src

src |> flatt(c)
# or
src |> flatt()

It will give a result same as list (1,0,3,2,4,3,6,5), means c(c(list (1,0,3), list (2,4)), list (3,6,5)) here.

You can try them at this webr playground.

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