Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

I am using the tm package to compute term-document-matrix for a dataset, I now have to write the term-document-matrix to a file but when I use the write functions in R I am getting a error.

Here is the code which I am using and the error I am getting:

tdm <- TermDocumentMatrix(crude, control = list(weighting = weightTfIdf, stopwords = TRUE))
dtm <- DocumentTermMatrix(crude, control = list(weighting = weightTfIdf, stopwords = TRUE))

and this is the error while I use the write.table command on this data:

Error in cat(list(...), file, sep, fill, labels, append) : argument 1 (type 'list') cannot be handled by 'cat'

I understand that tbm is a object of type Simple Triplet Matrix, but how can I write this to a simple text file.

share|improve this question
up vote 7 down vote accepted

I think I might be misunderstanding the question, but if all you want to do is export the term document matrix to a file, then how about this:

m <- inspect(tdm)
DF <-, stringsAsFactors = FALSE)

Is that what you're after mate?

Hope that helps a little,

Tony Breyal

share|improve this answer
Thanks Tony and Shane! The solution helped me big time! – Shreyas Karnik Jul 16 '10 at 4:25

Should the file be "human-readable"? If not, use dump, dput, or save. If so, convert your list into a data.frame.

Edit: You can convert your list into a matrix if each list element is equal length by doing matrix(unlist(, nrow=length([[1]])) or something like that (or with plyr).

Why aren't you doing your SVM analysis in R (e.g. with kernlab)?

Edit 2: Ok, I looked at your data, and it isn't easy to convert into a matrix because the list elements aren't equal length:

> is.list(tdm)
[1] TRUE
> str(tdm)
List of 7
 $ i        : int [1:1475] 15 29 151 152 173 205 215 216 227 228 ...
 $ j        : int [1:1475] 1 1 1 1 1 1 1 1 1 1 ...
 $ v        : Named num [1:1475] 3.32 4.32 2.32 2 2.32 ...
  ..- attr(*, "names")= chr [1:1475] "1.50" "16.00" "barrel," "barrel." ...
 $ nrow     : int 985
 $ ncol     : int 20
 $ dimnames :List of 2
  ..$ Terms: chr [1:985] "(bpd)" "(bpd)." "(gcc)" "(it) appears to be nearing a crossroads with regard to\nderegulation, both as it pertains to investments and imports," ...
  ..$ Docs : chr [1:20] "127" "144" "191" "194" ...
 $ Weighting: chr [1:2] "term frequency - inverse document frequency" "tf-idf"
 - attr(*, "class")= chr [1:2] "TermDocumentMatrix" "simple_triplet_matrix"

In order to convert this to a matrix, you will need to either take elements of this list (e.g. i, j) or else do some other manipulation.

Edit 3: Just to conclude my commentary here: these objects are intended to be used with the inspect function (see the package vignette).

As discussed, in order to use a function like write.table, you will need to convert your list into a matrix, which requires some manipulation of that list such that you have several vectors of equal length. Looking at the structure of these tm objects: this will be very difficult to do, and I suggest you work with the helper functions that are included with that package.

share|improve this answer
Hi Shane actually I want to use this term-document matrix for SVM without the string kernels so I will prefer it to be a matrix. – Shreyas Karnik Jul 15 '10 at 20:34
Kernlab has the string kernel based methods for SVM, I used them, not getting a good and robust classification model so want to try with a matrix of common terms. – Shreyas Karnik Jul 15 '10 at 20:43
dtmMatrix <- as.matrix(dtm)
write.csv(dtmMatrix, 'mydata.csv')

This certainly does the work. However, when I tried it on a very large DTM (25000 by 35000), it gave errors relating to lack of memory space.

I used the following method:

dtm <- DocumentTermMatrix(corpus)
dtm1 <- removeSparseTerms(dtm,0.998)   ##max allowed sparsity 0.998

m <- inspect(dtm1)
DF <-, stringsAsFactors = FALSE)

Which reduced the size of the document term matrix to a great extent! Here you can increase the max allowable sparsity (closer to 1) to include more terms in DF.

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.