# Multinomial Naive Bayes with scikit-learn for continuous and categorical data

I'm new to scikit-learn, I'm trying to create a Multinomial Bayes model to predict movies box office. Below is just a toy example, I'm not sure if it is logically correct (suggestions are welcome!). The Y's corresponds to the estimate gross I'm trying to predict (1: < \$20mi, 2: > \$20mi). I also discretized the number of screens the movie was shown.

The question is, is this a good approach to the problem? Or would it be better to assign numbers to all categories? Also, is it correct to embed the labels (e.g. "movie: Life of Pie") in the DictVectorizer object?

``````def get_data():

measurements = [ \
{'movie': 'Life of Pi', 'screens': "some", 'distributor': "fox"},\
{'movie': 'The Croods', 'screens': "some", 'distributor': "fox"},\
{'movie': 'San Fransisco', 'screens': "few", 'distributor': "TriStar"},\
]
vec = DictVectorizer()
arr = vec.fit_transform(measurements).toarray()

return arr

def predict(X):

Y = np.array([1, 1, 2])
clf = MultinomialNB()
clf.fit(X, Y)
print(clf.predict(X[2]))

if __name__ == "__main__":
vector = get_data()
predict(vector)
``````
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Why `toarray`? `MultinomialNB` can handle sparse matrices just fine. In fact, it'll be a lot faster on those. –  larsmans Apr 1 '13 at 12:52

The `movie` feature is useless. The DictVectorizer encodes each possible value as a different feature. As each movie will have a different title, they will all have completely independent features, and no generalization is possible there.