I want to get most relevant words from a text in order to prepare a tag cloud.
I used CountVectoriser from scikit-learn package:
cv = CountVectorizer(min_df=1, charset_error="ignore", stop_words="english", max_features=200)
This is nice, because it gives me words and frequences:
counts = cv.fit_transform([text]).toarray().ravel() words = np.array(cv.get_feature_names())
I can filter non frequent words out:
words = words[counts > 1] counts = counts[counts > 1]
as well as words, that are numbers:
words = words[np.array(map(lambda x: x.isalpha(), words))] counts = counts[np.array(map(lambda x: x.isalpha(), words))]
But it's still not perfect...
My questions are:
- How to filter out verbs?
- How to perfeorm stemming to get rid of different forms of the same word?
- How to call CountVectoriser to filter out two letter words?
Please also note:
- I'm fine with nltk but answer like "you should try nltk" is not an answer, give me a code, please.
- I don't want to use Bayesian classifier and other techniques, that require training a model. I don't have time for that and I don't have examples to train the classifier.
- Language is English