I have text stored in a python string.
What I Want
- To identify key words in that text.
- to identify N-grams in that text (ideally more than just bi and tri grams).
Keep in mind...
- The text might be small (e.g. tweet sized)
- The text might be middle (e.g. news article sized)
- The text might be large (e.g. book or chapter sized)
What I Have
I'm already using nltk to break the corpus into tokens and remove stopwords:
# split across any non-word character tokenizer = nltk.tokenize.RegexpTokenizer('[^\w\']+', gaps=True) # tokenize tokens = tokenizer.tokenize(text) # remove stopwords tokens = [w for w in tokens if not w in nltk.corpus.stopwords.words('english')]
I'm aware of the BigramCollocationFinder and TrigramCollectionFinder which does exaclty what I'm looking for for those two cases.
I need advice for n-grams of higher order, improving the kinds of results that come from BCF and TCF, and advice on the best way to identify the most unique individual key words.