TimeML Events Recognition and Classification: Learning CRF Models with Semantic Roles

نویسندگان

  • Hector Llorens
  • Estela Saquete Boró
  • Borja Navarro-Colorado
چکیده

This paper analyzes the contribution of semantic roles to TimeML event recognition and classification. For that purpose, an approach using conditional random fields with a variety of morphosyntactic features plus semantic roles features is developed and evaluated. Our system achieves an F1 of 81.4% in recognition and a 64.2% in classification. We demonstrate that the application of semantic roles improves the performance of the presented system, especially for nominal events.

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تاریخ انتشار 2010