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I am a newbie in NLP, just doing it for the first time. I am trying to solve a problem.

My problem is I have some documents which are manually tagged like doc1 - categoryA, categoryB doc2 - categoryA, categoryC doc3 - categoryE, categoryF, categoryG . . . . docN - categoryX

Here I have a fixed set of categories and any document can have any number of tags associated with it. I want to train the classifier using this input, so that this tagging process can be automated.

Thanks

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You need to actually ask us a question instead of simply expressing an intent of solving some problem. What did you try? What problems did you face? What exactly do you want us to try tell you about? –  adi92 Jan 25 '12 at 15:47
    
Basic "bag of words" analysis would seem like your first stop. Have you tried naive bayes classification of your documents? Many standard tools like dbacl are geared more towards many-to-one classification problems, though. –  tripleee Jan 25 '12 at 20:41
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What you are trying to do is called multi-way supervised text categorization (or classification). Knowing the right question to ask is half the problem.

As for how this can be done, here are two references:

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