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I want extract the names of products being sold from English text.

For example:

"I'm selling my xbox brand new"

"Selling rarely used 27 inch TV"

Should give me "xbox" and "27 inch TV"

The only thing I can think of at the moment is to hardcode in a giant list of important nouns and important adjectives: ['tv', 'fridge', 'xbox', 'laptop', etc]

Is there a better approach?

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NLP isn't easy. –  NullUserException Jan 24 '13 at 20:23
Seriously lanzz? Is the point of this site not to ask questions even when you have no clue where to start? Are algorithmic questions against the rules? –  Razor Storm Jan 24 '13 at 21:00

1 Answer 1

up vote 1 down vote accepted

It looks like nltk will give you a list of words and their parts of speech. Since you are only interested in nouns? this will provide you with them

>>> from nltk import pos_tag, word_tokenize
>>> pos_tag(word_tokenize("John's big idea isn't all that bad.")) 
[('John', 'NNP'), ("'s", 'POS'), ('big', 'JJ'), ('idea', 'NN'), ('is',
'VBZ'), ("n't", 'RB'), ('all', 'DT'), ('that', 'DT'), ('bad', 'JJ'),
('.', '.')]
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Thanks, this is a good start I'll look into it. –  Razor Storm Jan 24 '13 at 21:00

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