I'm trying to cluster some descriptions using LSI. As the dataset that I have is too long, I'm clustering based on the vectors obtained from the models instead of using the similarity matrix, which requires too much memory, and if I pick a sample, the matrix generated doesn't correspond to a square (this precludes the use of MDS).
However, after running the model and looking for the vectors I'm getting different vector's lengths in the descriptions. Most of them have a length of 300 (the num_topics argument in the model), but some few, with the same description, present a length of 299.
Why is this happening? Is there a way to correct it?
dictionary = gensim.corpora.Dictionary(totalvocab_lemmatized) dictionary.compactify() corpus = [dictionary.doc2bow(text) for text in totalvocab_lemmatized] ###tfidf model tfidf = gensim.models.TfidfModel(corpus, normalize = True) corpus_tfidf = tfidf[corpus] ###LSI model lsi = gensim.models.LsiModel(corpus_tfidf, id2word=dictionary, num_topics=300) vectors = for n in lemmatized[:100]: vec_bow = dictionary.doc2bow(n) vec_lsi = lsi[vec_bow] print(len(vec_lsi))