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Conference Paper Improving PP Attachment Disambiguation in a Rule-based Parser
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Authors
Yoon-Hyung Roh, Ki-Young Lee, Young-Gil Kim
Issue Date
2011-12
Citation
Pacific Asia Conference on Language, Information and Computation (PACLIC) 2011, pp.559-566
Language
English
Type
Conference Paper
Abstract
This paper deals with how to enhance the performance of a rule-based parser using statistical Information. PP (Prepositional Phrase) attachment ambiguity is one of the main ambiguities found in parsing. We therefore conducted some experiments on extracting statistical information for PP attachment from a corpus, and on applying such information to a rule-based parser. Two types of information are used: supervised learning data and unsupervised learning data. In this paper, we show how we apply these types of information and to what degree they contribute to the PP attachment as well as to the overall parsing performance. The final results show a 5.42% performance improvement in PP attachment, with an 8.7% error reduction ratio in the overall parsing performance.
KSP Keywords
Error reduction, Learning data, Rule-based, Statistical information, Unsupervised learning, performance improvement, reduction ratio