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In NLTK, using a naive bayes classifier, I know from examples its very simply to use a "bag of words" approach and look for unigrams or bigrams or both. Could you do the same using two completely different sets of features?

For instance, could I use unigrams and length of the training set (I know this has been mentioned once on here)? But of more interest to me would be something like bigrams and "bigrams" or combinations of the POS that appear in the document?

Is this beyond the power of the basic NLTK classifier?

Thanks Alex

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1 Answer 1

up vote 4 down vote accepted

NLTK classifiers can work with any key-value dictionary. I use {"word": True} for text classification, but you could also use {"contains(word)": 1} to achieve the same effect. You can also combine many features together, so you could have {"word": True, "something something": 1, "something else": "a"}. What matters most is that your features are consistent, so you always have the same kind of keys and a fixed set of possible values. Numeric values can be used, but the classifier isn't smart about them - it will treat numbers as discrete values, so that 99 and 100 are just as different as 1 and 100. If you want numbers to be handled in a smarter way, then I recommend using scikit-learn classifiers.

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+1, although I'm not sure what you mean by "treating numbers as discrete values" -- this will happen when numbers are used as feature labels, but also when they are used as feature values? (The NLTK scikit-learn wrapper by yours truly will pass numeric values on to the underlying classifier.) –  larsmans Jul 13 '12 at 14:11
I mean that NLTK classifiers treat numbers like anything else, and so ideally the numbers are from a small finite set (like an enum). Unless of course the numbers are passed thru to a scikit-learn classifier that knows what do with them. –  Jacob Jul 13 '12 at 20:16

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