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I am starting with scikit-learn and I am trying to transform a set of documents into a format on which I could apply clustering and classification. I have seen the details about the vectorization methods, and the tfidf transformations to load the files and index their vocabularies.

However, I have extra metadata for each documents, such as the authors, the division that was responsible, list of topics, etc.

How can I add features to each document vector generated by the vectorizing function?

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up vote 5 down vote accepted

You could use the DictVectorizer for the extra categorical data and then use scipy.sparse.hstack to combine them.

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excellent, I will try, but hstack seems to be what I need. Thanks! –  Mortimer Mar 6 '13 at 23:36

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