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A Study on Clustering Query-answer Documents with Structural Features

Journal of the Korean Society for Library and Information Science / Journal of the Korean Society for Library and Information Science, (P)1225-598X; (E)2982-6292
2005, v.39 no.4, pp.105-118

Abstract

As the number of users who ask and give answers in the query-answer documents retrieval system is growing exponentially, the query-answer document become a crucial information resource, as a new type of information retrieval service. A query-answer document consists of three structural parts: a query, explanation on query, and answers chosen by users who asked the query. To identify the role of each structural part in representing the topics of documents, the three structural parts were clustered automatically and the results of several clustering tests were compared in this study.

keywords
Clustering, Query-answer Documents, Query Clustering, Document Clustering, 클러스터링, 질의응답문서, 질의 클러스터링, 문서 클러스터링

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Journal of the Korean Society for Library and Information Science