Similar to this SO member, I've been looking for a simple package in R that filters out words that are non-English. For example, I might have a list of words that looks like this:
Flexivel
eficaz
gut-wrenching
satisfatorio
apropiado
Benutzerfreundlich
interessante
genial
cool
marketing
clients
internet
My end goal is to simply filter out the non-English words from the corpus so that my list is simply:
gut-wrenching
cool
marketing
clients
internet
I've read in the data as a data.frame
, although it will subsequently be transformed into a corpus and then a TermDocumentMatrix in order to create a wordcloud using wordcloud
and tm
.
I am currently using the package textcat
to filter by language. The documentation is a bit above my head, but seems to indicate that you can run the command textcat
on lists. For example, if the data above was in a data.frame called df
with a single column called "words", I'd run the command:
library(textcat)
textcat(c(df$word))
However, this has the effect of reading the entire list of words as a single document, rather than looking at each row and determining it's language. Please help!
cldr
package that uses Chrome to detect languages, but that seems to apply a probabilistic judgment to generate a guess about the "top three possible languages". This is a bit more sophisticated than what I need, so I was looking for a simpler dictionary based approach. I'll keep scouting, and make the question more specific once I find an option. (PS, I loveqdap
:))DICTIONARY[, 1]
data set). Then stem this and the list of words and use%in%
or alookup
environment to determine the words that are "English"