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There are 40 rows in my dataset and 3 attribute columns. Each row is a separate text document. I converted strings to separate terms using TermdocumentMatrix() function of library(tm). But this functions is treating number of attribute columns as number of documents. Why is it so? Am I making some mistake?

Is there any attribute filter in R which is similar to weka's StringToWordVector filter? I want the result to be same as weka's StringToWordVector filter

Sample is shown below :

Title, Author, BookSummary

The Da Vinci Code, Dan Brown, Louvre curator and Priory of Sion Grand Master Jacques<br>

This sample is showing just 1 row.

I tried this code :-

data<-read.csv("C:/Users/admin/Desktop/RTextMining/dataset.csv")
corpus.tmp<-Corpus(VectorSource(data))
View(corpus.tmp)

corpus.tmp<- tm_map(corpus.tmp,removePunctuation)  
corpus.tmp<- tm_map(corpus.tmp, stripWhitespace)
corpus.tmp<- tm_map(corpus.tmp, tolower)
corpus.tmp<- tm_map(corpus.tmp, removeWords, stopwords("english"))

library(SnowballC)
corpus.tmp <- tm_map(corpus.tmp, stemDocument)

TDM <- TermDocumentMatrix(corpus.tmp)
share|improve this question
    
Where's a reproducible example? it's difficult to provide help when we don't know what the data looks like (pick 3 rows) or the code you're trying. You can try qdap's ?bag_o_words function but it may not be fast enough for your needs. –  Tyler Rinker Apr 13 at 3:51
    
Hi tyler rinker I have posted sample dataset. –  r4sn4 Apr 13 at 3:55
    
@r4sn4, what is the expected result? I'm not familiar with weka. –  Richard Scriven Apr 13 at 4:10
    
@RichardScriven In addition to above code I applied weightTfIdf() function.So, the expected result should be like:- No. of coulmns = No. of terms and No. of rows = No. of documents. Value in each cell = frequency of each term in the corresponding document. –  r4sn4 Apr 13 at 4:31

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