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 want to stem the documents in a Corpus of plain text documents using the tm package in R. When I apply the SnowballStemmer function to all documents of the corpus, only the last word of each document is stemmed.

path <- c("C:/path/to/diretory")
corp <- Corpus(DirSource(path),
               readerControl = list(reader = readPlain, language = "en_US",
                                    load = TRUE))
tm_map(corp,SnowballStemmer) #stemDocument has the same problem

I think it is related to the way the documents are read into the corpus. To illustrate this with some simple examples:

> vec<-c("running runner runs","happyness happies")
> stemDocument(vec) 
   [1] "running runner run" "happyness happi" 

> vec2<-c("running","runner","runs","happyness","happies")
> stemDocument(vec2)
   [1] "run"    "runner" "run"    "happy"  "happi" <- 

> corp<-Corpus(VectorSource(vec))
> corp<-tm_map(corp, stemDocument)
> inspect(corp)
   A corpus with 2 text documents

   The metadata consists of 2 tag-value pairs and a data frame
   Available tags are:
     create_date creator 
   Available variables in the data frame are:

   run runner run

   happy happi

> corp2<-Corpus(DirSource(path),readerControl=list(reader=readPlain,language="en_US" ,  load=T))
> corp2<-tm_map(corp2, stemDocument)
> inspect(corp2)
   A corpus with 2 text documents

   The metadata consists of 2 tag-value pairs and a data frame
     Available tags are:
     create_date creator 
   Available variables in the data frame are:

   running runner runs

   happyness happies
share|improve this question
Isn't Rstem the R interface to Snowball? Therefore you should library(Rstem) and try tm_map(corp, wordStem). – Apprentice Queue Sep 1 '11 at 0:46
Thanks for the comment. I tried it and the results were the same. I will include a better example above to illustrate the problem some more. – Christian Sep 1 '11 at 7:15

The problem I see is that wordStem takes in a vector of words but Corpus plainTextReader assumes that in the documents that it reads, each word is on its own line. In other words, this would confuse plainTextReader as you will end up with 3 "words" in your document

From ancient grudge break to new mutiny,
Where civil blood makes civil hands unclean.
From forth the fatal loins of these two foes

Instead the document should be


Note also that punctuation also confuses wordStem so you would have to take them out as well.

Another way to do this without modifying your actual documents is defining a function that would do the separation and remove non-alphanumerics that appear before or after a word. Here is a simple one:

wordStem2 <- function(x) {
    mywords <- unlist(strsplit(x, " "))
    mycleanwords <- gsub("^\\W+|\\W+$", "", mywords, perl=T)
    mycleanwords <- mycleanwords[mycleanwords != ""]

corpA <- tm_map(mycorpus, wordStem2);
corpB <- Corpus(VectorSource(corpA));

Now just use corpB as your usual Corpus.

share|improve this answer
Thanks, the stemming worked now. However the results of applying wordStem and SnowballStemmer are individual character vectors. This results in the problem that the function DocumentTermMatrix does not work on the resulting corpus anymore. How could I get this to work? – Christian Sep 5 '11 at 8:28
@Christian I edited my answer for this. If there is an easier way, I don't know it. – Apprentice Queue Sep 7 '11 at 0:08

load required libraries


create vector

vec<-c("running runner runs","happyness happies")

create corpus from vector


very important thing is to check class of our corpus and preserve it as we want a standard corpus that R functions understand


<<PlainTextDocument (metadata: 7)>>
running runner runs

this will probably tell you Plain text document

So now we modify our faulty stemDocument function. first we convert our plain text to character and then we split out text, apply stemDocument which works fine now and paste it back together. most importantly we reconvert output to PlainTextDocument given by tm package.

stemDocumentfix <- function(x)
    PlainTextDocument(paste(stemDocument(unlist(strsplit(as.character(x), " "))),collapse=' '))

now we can use standard tm_map on our corpus

vec1 = tm_map(vec, stemDocumentfix)

result is

<<PlainTextDocument (metadata: 7)>>
run runner run

most important thing you need remember is to presever class of documents in corpus always. i hope this is a simplified solution to your problem using function from within the 2 libraries loaded.

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.