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Text categorization using predicate-argument structures

Author

Summary, in English

Most text categorization methods use the vector space model in combination with a representation of documents based on bags of words. As its name indicates, bags of words ignore possible structures in the text and only take into account isolated, unrelated words. Although this limitation is widely acknowledged, most previous attempts to extend the bag-of-words model with more advanced approaches failed to produce conclusive improvements. We propose a novel method that extends the word-level representation to automatically extracted semantic and syntactic features. We investigated three extensions: word-sense information, subject–verb–object triples, and rolesemantic predicate–argument tuples, all fitting within the vector space model. We computed their contribution to the categorization results on the Reuters corpus of newswires (RCV1). We show that these three extensions, either taken individually or in combination, result in statistically significant improvements of the microaverage F1 over a baseline using bags of words. We found that our best extended model that uses a combination of syntactic and semantic features reduces the error of the word-level baseline by up to 10 percent for the categories having more than 1,000 documents in the training corpus.

Publishing year

2009

Language

English

Pages

142-149

Publication/Series

Proceedings of the 17th Nordic Conference on Computational Lin- guistics (NODALIDA 2009) / Nealt Proceedings Series

Volume

4

Document type

Conference paper

Topic

  • Computer Science

Status

Published

ISBN/ISSN/Other

  • ISSN: 1736-6305