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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

  1. Parsing and Tokenization
  2. 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:

    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][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.

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Note that k-means is not the best idea for sparse vectors. In particular, you need to consider to improve your algorithm in a way it exploits sparsity when computing the distances. –  Anony-Mousse Feb 20 '13 at 19:27

1 Answer 1

you wrote there is 4800 documents, but didn't specify length of documents. Anyway, 8 hours is really long time (TF_IDF with some standard euclidean distance is not too much expensive).

If you want to know whether it is counting, just look at load balance (e.g. uptime in linux). Most likely there is something wrong and you should look after logging info ...

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