I am trying to "calculate" bigrams in my corpus with NLTK. However, there are still bugs in my script it seems. I can't figure out what I am doing wrong, so I hope someone will be able to give me at least some clue. Please keep in mind, I am very new to this. Thanks!
tekst.collocations() bgm = nltk.collocations.BigramAssocMeasures() finder = BigramCollocationFinder.from_words(mijn_corpus) # mijn_corpus should be it's loc finder.apply_freq_filter(3) # filter out the ones that only appear 1,2 times finder.nbest(bgm.pmi, 10) scored_bgm = finder.score_ngrams( bgm.likelihood_ratio ) prefix_keys = collections.defaultdict(list) for key, scores in scored: # sorting on first word of bigram prefix_keys[key].append((key, scores)) for key in prefix_keys: #strongest association prefix_keys[key].sort(key = lambda x: -x)