Conference Proceedings

Improving parsing and PP attachment performance with sense information

E Agirre, T Baldwin, D Martinez

Acl 08 Hlt 46th Annual Meeting of the Association for Computational Linguistics Human Language Technologies Proceedings of the Conference | Published : 2008

Abstract

To date, parsers have made limited use of semantic information, but there is evidence to suggest that semantic features can enhance parse disambiguation. This paper shows that semantic classes help to obtain significant improvement in both parsing and PP attachment tasks. We devise a gold-standard sense- and parse tree-annotated dataset based on the intersection of the Penn Treebank and SemCor, and experiment with different approaches to both semantic representation and disambiguation. For the Bikel parser, we achieved a maximal error reduction rate over the baseline parser of 6.9% and 20.5%, for parsing and PP-attachment respectively, using an unsupervised WSD strategy. This demonstrates th..

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