# Implementing Bag-of-Words Naive-Bayes classifier in NLTK

I basically have the same question as this guy.. The example in the NLTK book for the Naive Bayes classifier considers only whether a word occurs in a document as a feature.. it doesn't consider the frequency of the words as the feature to look at ("bag-of-words").

One of the answers seems to suggest this can't be done with the built in NLTK classifiers. Is that the case? How can I do frequency/bag-of-words NB classification with NLTK?

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scikit-learn has an implementation of multinomial naive Bayes, which is the right variant of naive Bayes in this situation. A support vector machine (SVM) would probably work better, though.

As Ken pointed out in the comments, NLTK has a nice wrapper for scikit-learn classifiers. Modified from the docs, here's a somewhat complicated one that does TF-IDF weighting, chooses the 1000 best features based on a chi2 statistic, and then passes that into a multinomial naive Bayes classifier. (I bet this is somewhat clumsy, as I'm not super familiar with either NLTK or scikit-learn.)

``````import numpy as np
from nltk.probability import FreqDist
from nltk.classify import SklearnClassifier
from sklearn.feature_extraction.text import TfidfTransformer
from sklearn.feature_selection import SelectKBest, chi2
from sklearn.naive_bayes import MultinomialNB
from sklearn.pipeline import Pipeline

pipeline = Pipeline([('tfidf', TfidfTransformer()),
('chi2', SelectKBest(chi2, k=1000)),
('nb', MultinomialNB())])
classif = SklearnClassifier(pipeline)

from nltk.corpus import movie_reviews
pos = [FreqDist(movie_reviews.words(i)) for i in movie_reviews.fileids('pos')]
neg = [FreqDist(movie_reviews.words(i)) for i in movie_reviews.fileids('neg')]
add_label = lambda lst, lab: [(x, lab) for x in lst]

l_pos = np.array(classif.batch_classify(pos[100:]))
l_neg = np.array(classif.batch_classify(neg[100:]))
print "Confusion matrix:\n%d\t%d\n%d\t%d" % (
(l_pos == 'pos').sum(), (l_pos == 'neg').sum(),
(l_neg == 'pos').sum(), (l_neg == 'neg').sum())
``````

This printed for me:

``````Confusion matrix:
524     376
202     698
``````

Not perfect, but decent, considering it's not a super easy problem and it's only trained on 100/100.

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Actually, he probably wants the scikit-learn Support Vector Machine models. NLTK has a nice wrapper `nltk.classify.scikitlearn.SklearnClassifier` that makes these classifiers fit well into its API. –  Ken Bloom Apr 11 '12 at 2:23
@KenBloom Yeah, SVMs would probably be better, but he did specifically ask about naive Bayes. :) That wrapper is nice, and I just realized that there's also a multinomial naive Bayes in scikit-learn, so I'll change my answer to use that. –  Dougal Apr 11 '12 at 2:31
that looks brilliantly simple. I wish I had learned python when I was doing my Ph.D. in this. I did a lot of work wrapping classifiers in Ruby that would have been totally unnecessary. –  Ken Bloom Apr 11 '12 at 2:49
+1, but note that this scikit-learn wrapper has not appeared in an NLTK release yet, so you need the bleeding edge version from GitHub. –  larsmans Apr 11 '12 at 21:25
@larsmans Really? I just did `pip install nltk` the other day on this computer, and it worked....though `nltk.__version__` is 2.0.1rc4, so I guess it's not an official release. –  Dougal Apr 11 '12 at 22:47
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The features in the NLTK bayes classifier are "nominal", not numeric. This means they can take a finite number of discrete values (labels), but they can't be treated as frequencies.

So with the Bayes classifier, you cannot directly use word frequency as a feature-- you could do something like use the 50 more frequent words from each text as your feature set, but that's quite a different thing

But maybe there are other classifiers in the NLTK that depend on frequency. I wouldn't know, but have you looked? I'd say it's worth checking out.

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