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Assigning function tags to parsed text
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AAAI'06 proceedings of the 21st national conference on Artificial intelligence - Volume 2
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Research on Language and Computation
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This paper presents a method to assign function tags based on a Naive Bayes approach. The method takes as input a parse tree and labels certain constituents with a set of functional marks such as logical subject, predicate, etc. The performance reported is promising, given the simplicity of a Naive Bayes approach, when compared with similar work.