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 trying to find a code that actually works to find the most frequently used two and three word phrases in R text mining package (maybe there is another package for it that I do not know). I have been trying to use the tokenizer, but seem to have no luck.

If you worked on a similar situation in the past, could you post a code that is tested and actually works? Thank you so much!

share|improve this question
Ordered phrases, that is? Or co-occurences? – Anony-Mousse Jan 17 '12 at 18:34
Both would be useful. Thank you! – appletree Jan 17 '12 at 20:06

You can pass in a custom tokenizing function to tm's DocumentTermMatrix function, so if you have package tau installed it's fairly straightforward.

library(tm); library(tau);

tokenize_ngrams <- function(x, n=3) return(rownames(,method="string",n=n)))))

texts <- c("This is the first document.", "This is the second file.", "This is the third text.")
corpus <- Corpus(VectorSource(texts))
matrix <- DocumentTermMatrix(corpus,control=list(tokenize=tokenize_ngrams))

Where n in the tokenize_ngrams function is the number of words per phrase. This feature is also implemented in package RTextTools, which further simplifies things.

texts <- c("This is the first document.", "This is the second file.", "This is the third text.")
matrix <- create_matrix(texts,ngramLength=3)

This returns a class of DocumentTermMatrix for use with package tm.

share|improve this answer
I realize this is a pretty stale thread, but has anybody tried this recently? In my hands, the first method gives the following error: > matrix <- DocumentTermMatrix(corpus,control=list(tokenize=tokenize_ngrams)) Error in simple_triplet_matrix(i = i, j = j, v = as.numeric(v), nrow = length(allTerms), : 'i, j, v' different lengths In addition: Warning messages: 1: In mclapply(unname(content(x)), termFreq, control) : all scheduled cores encountered errors in user code 2: In simple_triplet_matrix(i = i, j = j, v = as.numeric(v), nrow = length(allTerms), : NAs introduced by coercion. – MAndrecPhD Jan 23 '15 at 1:12
I get the same error, @MAndrecPhD, when trying the library(RTextTools) example. – jessi Feb 24 '15 at 18:25
I have the same problem. I have seen some people suggest that SnowballC package will solve it, but it does not for me. Any suggestions? – Marius Jul 26 '15 at 11:43
If I add the following the simple_triplet_matrix error no longer appears options(mc.cores=1) however I get the following error instead Error in FUN(X[[i]], ...) : non-character argument – Marius Jul 26 '15 at 16:45

This is part 5 of the FAQ of the package:

5. Can I use bigrams instead of single tokens in a term-document matrix?

Yes. RWeka provides a tokenizer for arbitrary n-grams which can be directly passed on to the term-document matrix constructor. E.g.:



  BigramTokenizer <- function(x) NGramTokenizer(x, Weka_control(min = 2, max = 2))
  tdm <- TermDocumentMatrix(crude, control = list(tokenize = BigramTokenizer))

share|improve this answer
This did the trick for me. Actually, the current version of the FAQ has a solution that doesn't require RWeka: – Ochado Apr 30 at 15:05

This is my own made up creation for different purposes but I think may applicable to your needs too:

#User Defined Functions
Trim <- function (x) gsub("^\\s+|\\s+$", "", x)

breaker <- function(x) unlist(strsplit(x, "[[:space:]]|(?=[.!?*-])", perl=TRUE))

strip <- function(x, digit.remove = TRUE, apostrophe.remove = FALSE){
    strp <- function(x, digit.remove, apostrophe.remove){
        x2 <- Trim(tolower(gsub(".*?($|'|[^[:punct:]]).*?", "\\1", as.character(x))))
        x2 <- if(apostrophe.remove) gsub("'", "", x2) else x2
        ifelse(digit.remove==TRUE, gsub("[[:digit:]]", "", x2), x2)
unlist(lapply(x, function(x) Trim(strp(x =x, digit.remove = digit.remove, 
    apostrophe.remove = apostrophe.remove)) ))

unblanker <- function(x)subset(x, nchar(x)>0)

#Fake Text Data
x <- "I like green eggs and ham.  They are delicious.  They taste so yummy.  I'm talking about ham and eggs of course"

#The code using Base R to Do what you want
words <- unblanker(breaker(strip(x)))
textDF <-
textDF$characters <- sapply(as.character(textDF$words), nchar)
textDF2 <- textDF[order(-textDF$characters, textDF$Freq), ]
rownames(textDF2) <- 1:nrow(textDF2)
subset(textDF2, characters%in%2:3)
share|improve this answer
Hi, @Tyler-Rinker, I know this is a few years old now, but i get this error when testing your code: ` Error in FUN(c("", "", "", "", "", "", "", "", "", "", "", "", "", "", : could not find function "Trim" ` – jessi Feb 24 '15 at 18:32
Added Trim if that helps. – Tyler Rinker Feb 24 '15 at 18:46
haha. Thanks, @Tyler_Rinker. I had a function of the exact same called trim but I didn't realize that was what it was looking for. Thanks! – jessi Feb 26 '15 at 15:40

I add a similar problem by using tm and ngram packages. After debugging mclapply, I saw there where problems on documents with less than 2 words with the following error

   input 'x' has nwords=1 and n=2; must have nwords >= n

So I've added a filter to remove document with low word count number:

    myCorpus.3 <- tm_filter(myCorpus.2, function (x) {
      length(unlist(strsplit(stringr::str_trim(x$content), '[[:blank:]]+'))) > 1

Then my tokenize function looks like:

bigramTokenizer <- function(x) {
  x <- as.character(x)

  # Find words
  one.list <- c()
    one.gram <- ngram::ngram(x, n = 1)
    one.list <- ngram::get.ngrams(one.gram)
  error = function(cond) { warning(cond) })

  # Find 2-grams
  two.list <- c()
    two.gram <- ngram::ngram(x, n = 2)
    two.list <- ngram::get.ngrams(two.gram)
  error = function(cond) { warning(cond) })

  res <- unlist(c(one.list, two.list))
  res[res != '']

Then you can test the function with:

dtmTest <- lapply(myCorpus.3, bigramTokenizer)

And finally:

dtm <- DocumentTermMatrix(myCorpus.3, control = list(tokenize = bigramTokenizer))
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.