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Automatic multi-document summarization for digital libraries

With the rapid growth of the World Wide Web and online information services, more and more information is available and accessible online. Automatic summarization is an indispensable solution to reduce the information overload problem. Multi-document summarization is useful to provide an overview of a topic and allow users to zoom in for more details on aspects of interest. This paper reports three types of multi-document summaries generated for a set of research abstracts, using different summarization approaches: a sentence-based summary generated by a MEAD summarization system that extracts important sentences using various features, another sentence-based summary generated by extracting research objective sentences, and a variable-based summary focusing on research concepts and relationships. A user evaluation was carried out to compare the three types of summaries. The evaluation results indicated that the majority of users (70%) preferred the variable-based summary, while 55% of the users preferred the research objective summary, and only 25% preferred the MEAD summary.

Identiferoai:union.ndltd.org:arizona.edu/oai:arizona.openrepository.com:10150/106042
Date January 2006
CreatorsOu, Shiyan, Khoo, Christopher S.G., Goh, Dion H.
ContributorsKhoo, C., Singh, D., Chaudhry, A.S.
PublisherSchool of Communication & Information, Nanyang Technological University
Source SetsUniversity of Arizona
LanguageEnglish
Detected LanguageEnglish
TypeConference Paper

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