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I'm using scikit-learn to extract text features from a "bag of words" text (text tokenized on single words). To do so, I'm using a TfidfVectorizer to also reduce the weight of very frequent words (ie: "a", "the", etc).

text = 'Some text, with a lot of words...'
tfidf_vectorizer = TfidfVectorizer(
    min_df=1,  # min count for relevant vocabulary
    max_features=4000,  # maximum number of features
    strip_accents='unicode',  # replace all accented unicode char
    # by their corresponding  ASCII char
    analyzer='word',  # features made of words
    token_pattern=r'\w{4,}',  # tokenize only words of 4+ chars
    ngram_range=(1, 1),  # features made of a single tokens
    use_idf=True,  # enable inverse-document-frequency reweighting
    smooth_idf=True,  # prevents zero division for unseen words

# vectorize and re-weight
desc_vect = tfidf_vectorizer.fit_transform([text])

I would now like to be able to link each predicted feature with its corresponding tfidf float value, storing it in a dict

{'feature1:' tfidf1, 'feature2': tfidf2, ...}

I achieved it by using

d = dict(zip(tfidf_vectorizer.get_feature_names(), desc_vect.data))

I would like to know if there was a better, scikit-learn native way to do such a thing.

Thank you very much.

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1 Answer 1

up vote 4 down vote accepted

For a single document, this should be fine. An alternative, that works when the document set is small, is this recipe of mine that uses Pandas.

If you want to do this for multiple documents, then you can adapt the code in DictVectorizer.inverse_transform:

desc_vect = desc_vect.tocsr()

n_docs = desc_vect.shape[0]
tfidftables = [{} for _ in xrange(n_docs)]
terms = tfidf_vectorizer.get_feature_names()

for i, j in zip(*desc_vect.nonzero()):
    tfidftables[i][terms[j]] = X[i, j]
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Thank you very much for your answer. –  Balthazar Rouberol Mar 12 '13 at 13:48

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