A Query-Sensitive Graph-Based Sentence Ranking Algorithm for Query-Oriented Multi-document Summarization

Furu Wei, Yanxiang He, Wenjie Li, Q. Lu
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引用次数: 18

Abstract

Graph-based models and ranking algorithms have been drawn considerable attentions from the document summarization community in the recent years. However, in regard to query-oriented summarization, the influence of the query has been limited to the sentence nodes in the previous graph models. We argue that other than the sentence nodes the sentence-sentence edges should also be measured in accordance with the given query. In this paper, we develop a query-sensitive similarity measure that incorporates the query influence into the evaluation of sentence-sentence edges for graph-based query-oriented summarization. Furthermore, in order to cope with the multi-document summarization task, we explicitly distinguish the inter-document sentence relations from the intra-document sentence relations and emphasize the influence of global information from the document set on local sentence evaluation. Experimental results on DUC 2005 dataset are quite promising and motivate us to further investigate query-sensitive similarity measures.
面向查询的多文档摘要基于查询敏感图的句子排序算法
近年来,基于图的模型和排序算法受到了文档摘要界的广泛关注。然而,对于面向查询的摘要,在以前的图模型中,查询的影响仅限于句子节点。我们认为除了句子节点外,句子边缘也应该根据给定的查询进行测量。在本文中,我们开发了一种查询敏感的相似度度量,该度量将查询影响纳入基于图的面向查询的句子-句子边缘的评估中。此外,为了应对多文档摘要任务,我们明确区分了文档间的句子关系和文档内的句子关系,强调了来自文档集的全局信息对局部句子评价的影响。在DUC 2005数据集上的实验结果非常有希望,并激励我们进一步研究查询敏感的相似度度量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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