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Automatic Question Answering from Web Documents 被引量:4

Automatic Question Answering from Web Documents
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摘要 A passage retrieval strategy for web-based question answering (QA) systems is proposed in our QA system. It firstly analyzes the question based on semantic patterns to obtain its syntactic and semantic information and then form initial queries. The queries are used to retrieve documents from the World Wide Web (WWW) using the Google search engine. The queries are then rewritten to form queries for passage retrieval in order to improve the precision. The relations between keywords in the question are employed in our query rewrite method. The experimental result on the question set of the TREC-2003 passage task shows that our system performs well for factoid questions. A passage retrieval strategy for web-based question answering (QA) systems is proposed in our QA system. It firstly analyzes the question based on semantic patterns to obtain its syntactic and semantic information and then form initial queries. The queries are used to retrieve documents from the World Wide Web (WWW) using the Google search engine. The queries are then rewritten to form queries for passage retrieval in order to improve the precision. The relations between keywords in the question are employed in our query rewrite method. The experimental result on the question set of the TREC-2003 passage task shows that our system performs well for factoid questions.
出处 《Wuhan University Journal of Natural Sciences》 CAS 2007年第5期875-880,共6页 武汉大学学报(自然科学英文版)
基金 Supported by the National Basic Research Program of China (2003CB317002) the Grant from City University of Hong Kong (7002137)
关键词 question answering(QA) passage retrieval semantic pattern question answering(QA) passage retrieval semantic pattern
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