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A cue-based hub-authority approach for multi-document text summarization

机译:一种基于提示的中心权限方法,用于多文档文本摘要

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Multi-document extractive summarization relies on the concept of sentence centrality to identify the most important sentences in a document. Although some research has introduced the graph-based ranking algorithms such as PageRank and HITS into the text summarization, we propose a new approach under the hub-authority framework in this paper. Our approach combines the text content with some cues such as "cue phrase", "sentence length" and "first sentence" and explores the sub-topics in the multi-documents by bringing the features of these sub-topics into graph-based sentence ranking algorithms. We provide an evaluation of our method on DUC 2004 data. The results show that our approach is an effective graph-ranking schema in multi-document generic text summarization.
机译:多文档摘录摘要依赖于句子中心性的概念来识别文档中最重要的句子。尽管一些研究已经将基于图的排名算法(例如PageRank和HITS)引入了文本摘要中,但我们还是在中心权限框架下提出了一种新方法。我们的方法将文本内容与某些提示(例如“提示短语”,“句子长度”和“第一句话”)结合在一起,并通过将这些子主题的功能引入基于图的句子中来探索多文档中的子主题。排名算法。我们对DUC 2004数据的方法进行了评估。结果表明,我们的方法是多文档通用文本摘要中的一种有效的图形排名方案。

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