Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I'm trying to do some stemming in R but it only seems to work on individual documents. My end goal is a term document matrix that shows the frequency of each term in the document.

Here's an example:

require(RWeka)
require(tm)
require(Snowball)

worder1<- c("I am taking","these are the samples",
"He speaks differently","This is distilled","It was placed")
df1 <- data.frame(id=1:5, words=worder1)

> df1
  id                 words
1  1           I am taking
2  2 these are the samples
3  3 He speaks differently
4  4     This is distilled
5  5         It was placed

This method works for the stemming part but not the term document matrix part:

> corp1 <- Corpus(VectorSource(df1$words))
> inspect(corp1)
A corpus with 5 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:
  MetaID 

[[1]]
I am taking

[[2]]
these are the samples

[[3]]
He speaks differently

[[4]]
This is distilled

[[5]]
It was placed

> corp1 <- tm_map(corp1, SnowballStemmer)
> inspect(corp1)
A corpus with 5 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:
  MetaID 

[[1]]
[1] I am tak

[[2]]
[1] these are the sampl

[[3]]
[1] He speaks differ

[[4]]
[1] This is distil

[[5]]
[1] It was plac

>  class(corp1)
[1] "VCorpus" "Corpus"  "list"   
> tdm1 <- TermDocumentMatrix(corp1)
Error in UseMethod("Content", x) : 
  no applicable method for 'Content' applied to an object of class "character"

So instead I tried creating the term document matrix first but this time the words don't get stemmed:

> corp1 <- Corpus(VectorSource(df1$words))
> tdm1 <- TermDocumentMatrix(corp1, control=list(stemDocument=TRUE))
>  as.matrix(tdm1)
             Docs
Terms         1 2 3 4 5
  are         0 1 0 0 0
  differently 0 0 1 0 0
  distilled   0 0 0 1 0
  placed      0 0 0 0 1
  samples     0 1 0 0 0
  speaks      0 0 1 0 0
  taking      1 0 0 0 0
  the         0 1 0 0 0
  these       0 1 0 0 0
  this        0 0 0 1 0
  was         0 0 0 0 1

Here the words are obviously not stemmed.

Any suggestions?

share|improve this question
    
The stemming has worked only on the last word of your documents, isn't it ? Because "speaks" has not been stemmed, while I think it should. My opinion is that the stemming function in R has many problems. I and my colleagues have never been able to make it work. We ran a python script instead... –  Pop Aug 9 '12 at 7:37
    
@AllenR.: You're right. I didn't notice that. I'll give python a look. Thanks. –  screechOwl Aug 9 '12 at 12:40
1  
I do not know if you've heard about the package nltk in python which does this kind of things. –  Pop Aug 9 '12 at 12:59
1  
@AllenR.: There is a way to do it without Python using the RTextTools package. See the solution below. –  Timothy P. Jurka Aug 14 '12 at 19:59

3 Answers 3

up vote 5 down vote accepted

The RTextTools package on CRAN allows you to do this.

library(RTextTools)
worder1<- c("I am taking","these are the samples",
"He speaks differently","This is distilled","It was placed")
df1 <- data.frame(id=1:5, words=worder1)

matrix <- create_matrix(df1, stemWords=TRUE, removeStopwords=FALSE, minWordLength=2)
colnames(matrix) # SEE THE STEMMED TERMS

This returns a DocumentTermMatrix that can be used with package tm. You can play around with the other parameters (e.g. removing stopwords, changing the minimum word length, using a stemmer for a different language) to get the results you need. When displayed as.matrix the example produces the following term matrix:

                         Terms
Docs                      am are differ distil he is it place sampl speak take the these this was
  1 I am taking            1   0      0      0  0  0  0     0     0     0    1   0     0    0   0
  2 these are the samples  0   1      0      0  0  0  0     0     1     0    0   1     1    0   0
  3 He speaks differently  0   0      1      0  1  0  0     0     0     1    0   0     0    0   0
  4 This is distilled      0   0      0      1  0  1  0     0     0     0    0   0     0    1   0
  5 It was placed          0   0      0      0  0  0  1     1     0     0    0   0     0    0   1
share|improve this answer
1  
Thank you very much. –  screechOwl Aug 15 '12 at 18:46

Yes for steming words of document in a Corpus you required Rweka, Snowball and tm package.

use following instruction

> library (tm)
#set your directory Suppose u have set "F:/St" then next command is 
> a<-Corpus(DirSource("/st"), 
            readerControl=list(language="english")) # "/st" it is path of your directory
> a<-tm_map(a, stemDocument, language="english")
> inspect(a)

sure you will find your desired result.

share|improve this answer

This works in R as expected with tm version 0.6. You had a few minor errors that prevented the stemming for working correctly, perhaps they're from an older version of tm? Anyway, here's how to make it work:

require(RWeka)
require(tm)

The stemming package is not your Snowball but SnowballC:

require(SnowballC)

worder1<- c("I am taking","these are the samples",
            "He speaks differently","This is distilled","It was placed")
df1 <- data.frame(id=1:5, words=worder1)
corp1 <- Corpus(VectorSource(df1$words))
inspect(corp1)

Change your SnowballStemmer to stemDocument in the next line like so:

corp1 <- tm_map(corp1, stemDocument)
inspect(corp1)

Words are stemmed, as expected:

<<VCorpus (documents: 5, metadata (corpus/indexed): 0/0)>>

[[1]]
<<PlainTextDocument (metadata: 7)>>
I am take

[[2]]
<<PlainTextDocument (metadata: 7)>>
these are the sampl

[[3]]
<<PlainTextDocument (metadata: 7)>>
He speak differ

[[4]]
<<PlainTextDocument (metadata: 7)>>
This is distil

[[5]]
<<PlainTextDocument (metadata: 7)>>
It was place

Now do the term document matrix:

corp1 <- Corpus(VectorSource(df1$words))

Change your stemDocument to stemming:

tdm1 <- TermDocumentMatrix(corp1, control=list(stemming=TRUE))
as.matrix(tdm1)

And we get a tdm of stemmed words, as expected:

        Docs
Terms    1 2 3 4 5
  are    0 1 0 0 0
  differ 0 0 1 0 0
  distil 0 0 0 1 0
  place  0 0 0 0 1
  sampl  0 1 0 0 0
  speak  0 0 1 0 0
  take   1 0 0 0 0
  the    0 1 0 0 0
  these  0 1 0 0 0
  this   0 0 0 1 0
  was    0 0 0 0 1

So there you go. Perhaps a more careful reading of the tm docs might have saved a bit of your time with this ;)

share|improve this answer

Your Answer

 
discard

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.