A Hybrid Discourse Relation Parser in CoNLL 2015

نویسندگان

  • Sobha Lalitha Devi
  • Sindhuja Gopalan
  • Lakshmi S
  • Pattabhi R. K. Rao
  • R. Vijay Sundar Ram
  • C. S. Malarkodi
چکیده

The work presented here describes our participation in CoNLL 2015 shared task in the closed track. Here we have used a hybrid approach, where Machine Learning (ML) technique and linguistic rules are used to identify the discourse relations. We have developed this system with a view that it consistently works across all domains and all types of text corpus. We have obtained encouraging results. The performance on blind test data and test data were similar.

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تاریخ انتشار 2015