Title: | Chinese text summarization using a trainable summarizer and latent semantic analysis |
Authors: | Yeh, JY Ke, HR Yang, WP 資訊工程學系 圖書館 Department of Computer Science Library |
Issue Date: | 2002 |
Abstract: | In this paper, two novel approaches are proposed to extract important sentences from a document to create its summary. The first is a corpus-based approach using feature analysis. It brings up three new ideas: 1) to employ ranked position to emphasize the significance of sentence position, 2) to reshape word unit to achieve higher accuracy of keyword importance, and 3) to train a score function by the genetic algorithm for obtaining a suitable combination of feature weights. The second approach combines the ideas of latent semantic analysis and text relationship maps to interpret conceptual structures of a document. Both approaches are applied to Chinese text summarization. The two approaches were evaluated by using a data corpus composed of 100 articles about politics from New Taiwan Weekly, and when the compression ratio was 30%, average recalls of 52.0% and 45.6% were achieved respectively. |
URI: | http://hdl.handle.net/11536/29101 |
ISBN: | 3-540-00261-8 |
ISSN: | 0302-9743 |
Journal: | DIGITAL LIBRARIES: PEOPLE, KNOWLEDGE, AND TECHNOLOGY, PROCEEDINGS |
Volume: | 2555 |
Begin Page: | 76 |
End Page: | 87 |
Appears in Collections: | Conferences Paper |