I understand that this question has been asked before and there are many links. I have gone through them, well most of them anyway but sadly failed to find a simple, and concise reponse. The number of documents are around 4800.
So here it goes.
I am using nltk for clustering a multitude of text documents. What I have done till now is
- Parsing and Tokenization
- Stopword and Stemming
The next step that I am doing is to find a TF-IDF vector for each document. So that I have n vectors of equal length for n documents.
Now I need to feed these vectors into my K-means function and let it rip.
Question is, am I doing it right?
Next question is related to code:
corpus =  unique_terms =  def TFIDF(document): start_time = time.time() word_tfidf =  for word in unique_terms: word_tfidf.append(collection.tf_idf(word,document)) print time.time() - start_time return word_tfidf if __name__ == '__main__': count = 0 corpus = cPickle.load(open('C:\\Users\\Salman\\Desktop\\Work\\NLP\\Corpus\\FB\\save-3.p', 'rb')) ##read the corpus from file collection = nltk.TextCollection(corpus) unique_terms = list(set(collection)) vectors = [numpy.array(TFIDF(f)) for f in corpus] print "Vectors created." print "First 10 words are", unique_terms[:10] print "First 10 stats for first document are", vectors[0:10]
I have already downloaded the corpus (list of vectors for each document before TF-IDF) to a file that I am reading in corpus.
Problem is that it's been 8 hours and this process hasn't yet completed. Have I missed anything here? Or in general, TF-IDF does take this amount of time.