Learning Alignments and Leveraging Natural Logic

نویسندگان

  • Nathanael Chambers
  • Daniel M. Cer
  • Trond Grenager
  • David Leo Wright Hall
  • Chloé Kiddon
  • Bill MacCartney
  • Marie-Catherine de Marneffe
  • Daniel Ramage
  • Eric Yeh
  • Christopher D. Manning
چکیده

We describe an approach to textual inference that improves alignments at both the typed dependency level and at a deeper semantic level. We present a machine learning approach to alignment scoring, a stochastic search procedure, and a new tool that finds deeper semantic alignments, allowing rapid development of semantic features over the aligned graphs. Further, we describe a complementary semantic component based on natural logic, which shows an added gain of 3.13% accuracy on the RTE3 test set.

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تاریخ انتشار 2007