I'm getting started with the tm package in R, so please bear with me and apologies for the big ol' wall of text. I have created a fairly large corpus of Socialist/Communist propaganda and would like to extract newly coined political terms (multiple words, e.g. "struggle-criticism-transformation movement").
This is a two-step question, one regarding my code so far and one regarding how I should go on.
Step 1: To do this, I wanted to identify some common ngrams first. But I get stuck very early on. Here is what I've been doing:
library(tm) library(RWeka) a <-Corpus(DirSource("/mycorpora/1965"), readerControl = list(language="lat")) # that dir is full of txt files summary(a) a <- tm_map(a, removeNumbers) a <- tm_map(a, removePunctuation) a <- tm_map(a , stripWhitespace) a <- tm_map(a, tolower) a <- tm_map(a, removeWords, stopwords("english")) a <- tm_map(a, stemDocument, language = "english") # everything works fine so far, so I start playing around with what I have adtm <-DocumentTermMatrix(a) adtm <- removeSparseTerms(adtm, 0.75) inspect(adtm) findFreqTerms(adtm, lowfreq=10) # find terms with a frequency higher than 10 findAssocs(adtm, "usa",.5) # just looking for some associations findAssocs(adtm, "china",.5) # ... and so on, and so forth, all of this works fine
The corpus I load into R works fine with most functions I throw at it. I haven't had any problems creating TDMs from my corpus, finding frequent words, associations, creating word clouds and so on. But when I try to use identify ngrams using the approach outlined in the tm FAQ, I'm apparently making some mistake with the tdm-constructor:
# Trigram TrigramTokenizer <- function(x) NGramTokenizer(x, Weka_control(min = 3, max = 3)) tdm <- TermDocumentMatrix(a, control = list(tokenize = TrigramTokenizer)) inspect(tdm)
I get this error message:
Error in rep(seq_along(x), sapply(tflist, length)) : invalid 'times' argument In addition: Warning message: In is.na(x) : is.na() applied to non-(list or vector) of type 'NULL'
Any ideas? Is "a" not the right class/object? I'm confused. I assume there's a fundamental mistake here, but I'm not seeing it. :(
Step 2: Then I would like to identify ngrams that are significantly overrepresented, when I compare the corpus against other corpora. For example I could compare my corpus against a large standard english corpus. Or I create subsets that I can compare against each other (e.g. Soviet vs. a Chinese Communist terminology). Do you have any suggestions how I should go about doing this? Any scripts/functions I should look into? Just some ideas or pointers would be great.
Thanks for your patience!