Summarization beyond sentence extraction: A probabilistic approach to sentence compression

When humans produce summaries of documents, they do not simply extract sentences and concatenate them. Rather, they create new sentences that are grammatical, that cohere with one another, and that capture the most salient pieces of information in the original document. Given that large collections...

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Veröffentlicht in:Artificial intelligence 2002-07, Vol.139 (1), p.91-107
Hauptverfasser: Knight, Kevin, Marcu, Daniel
Format: Artikel
Sprache:eng
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Zusammenfassung:When humans produce summaries of documents, they do not simply extract sentences and concatenate them. Rather, they create new sentences that are grammatical, that cohere with one another, and that capture the most salient pieces of information in the original document. Given that large collections of text/abstract pairs are available online, it is now possible to envision algorithms that are trained to mimic this process. In this paper, we focus on sentence compression, a simpler version of this larger challenge. We aim to achieve two goals simultaneously: our compressions should be grammatical, and they should retain the most important pieces of information. These two goals can conflict. We devise both a noisy-channel and a decision-tree approach to the problem, and we evaluate results against manual compressions and a simple baseline.
ISSN:0004-3702
1872-7921
DOI:10.1016/S0004-3702(02)00222-9