I want to extract relevant terms from text and I want to choose the most relevant terms.
How to config nltk data -> how, to, config ignored config mysql to scan -> config NOT ingored Python NLTK usage -> usage ingored new song by the band usage -> usage NOT ingored NLTK Thinks that -> thinks ignored critical thinking -> thinking NOT ignored
I can think only this crude method:
>>> text = nltk.word_tokenize(input) >>> nltk.pos_tag(text)
and to save only the nouns and verbs. But even if "think" and "thinking" are verbs, I want to retain only "thinking". Also "combined" over "combine". I also want to extract phrases if I could. Also terms like "free2play", "@pro_blogger" etc.
Please suggest a better scheme or how to actually make my scheme work.