I have a term-document matrix generated by DocumentTermMatrix() command from tm package. The input data is a big text file with some Twitter entries. It was being read by
x = read.delim("medium_twi.txt", stringsAsFactors=F, header=F, quote = "") command, then cleaned\stemmed and finally converted into a term-document matrix. All works like a charm up to now.
Now that's where the problem begins. The inspect command says that the majority of entries are sparse and there are 684012 non-sparse:
> inspect(adtm) <<DocumentTermMatrix (documents: 100000, terms: 69456)>> Non-/sparse entries: 684012/6944915988 Sparsity : 100%
However, when I try to run (0.1 parameter is arbitrary. I've tried even 0.00000001 to see if the problem is with the very low percentage of non-sparse entries, but the result stays the same)
adtm2 <- removeSparseTerms(adtm, 0.1)
It removes all of the terms.
> adtm2$dimnames $Terms NULL
I don't quite understand why is that so, there are definitely some words that are quite frequent:
> findFreqTerms(adtm, 4000)  "get" "good" "just" "like" "love" "will"
Please tell me where and what I did wrong.