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Chapter 5 of the Python NLTK book gives this example of tagging words in a sentence:

>>> text = nltk.word_tokenize("And now for something completely different")
>>> nltk.pos_tag(text)
[('And', 'CC'), ('now', 'RB'), ('for', 'IN'), ('something', 'NN'), ('completely', 'RB'), ('different', 'JJ')]

nltk.pos_tag calls the default tagger, which uses a full set of tags. Later in the chapter a simplified set of tags is introduced.

How can I tag sentences with this simplified set of part-of-speech tags?

Also have I understood the tagger correctly, i.e. can I change the tag set that the tagger uses as I'm asking, or should I map the tags it returns on to the simplified set, or should I create a new tagger from a new, simply-tagged corpus?

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1 Answer

up vote 9 down vote accepted

To simplify tags from the default tagger, you can use nltk.tag.simplify.simplify_wsj_tag, like so:

>>> import nltk
>>> from nltk.tag.simplify import simplify_wsj_tag
>>> tagged_sent = nltk.pos_tag(tokens)
>>> simplified = [(word, simplify_wsj_tag(tag)) for word, tag in tagged_sent]
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Brilliant, thanks. –  Ollie Glass Apr 26 '11 at 20:40
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