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I am working on prediction problem using a large textual dataset. I am implementing Bag of Words Model.

What should be the best way to get the bag of words? Right now, I have tf-idf of the various words and the number of words is too large to use it for further assignments. If I use tf-idf criteria, what should be the tf-idf threshold for getting bag of words? Or should I use some other algorithms. I am using python.

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I'm not following the linked article. (I don't understand how they go from a dict to the two "vectors" they have). In any case, you probably will end up using a collections.Counter -- although you might want to explain what a tf-idf is as well ... – mgilson Mar 19 '13 at 18:11

Using the collections.Counter class

>>> import collections, re
>>> texts = ['John likes to watch movies. Mary likes too.',
   'John also likes to watch football games.']
>>> bagsofwords = [ collections.Counter(re.findall(r'\w+', txt))
            for txt in texts]
>>> bagsofwords[0]
Counter({'likes': 2, 'watch': 1, 'Mary': 1, 'movies': 1, 'John': 1, 'to': 1, 'too': 1})
>>> bagsofwords[1]
Counter({'watch': 1, 'games': 1, 'to': 1, 'likes': 1, 'also': 1, 'John': 1, 'football': 1})
>>> sumbags = sum(bagsofwords, collections.Counter())
>>> sumbags
Counter({'likes': 3, 'watch': 2, 'John': 2, 'to': 2, 'games': 1, 'football': 1, 'Mary': 1, 'movies': 1, 'also': 1, 'too': 1})
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You should check out scikits-learn, which has a bunch of this functionality baked in. There's even some sample code on their web site.

Another option is nltk, which has a lot of nice language processing functionality. I haven't used it as much, but it seems like it should have some facilities for doing what you're doing.

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