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Summarizing Relevant Information for Question-Answering Using Hybrid Relevance Analysis and Surface Feature Salience

机译:使用混合相关性分析和表面特征显着性汇总相关信息以进行问题解答

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摘要

Much research for question-answering aims to answer factoid, definitional and biographical questions. In most cases, the answers are given as a name, date, quantity, and so on. In this paper, we try to merge techniques of multidocument summarization and question-answering to generate a brief, well-organized fluent summary to provide more relevant information for the purpose of answering real-world complicated questions. The problem is addressed as a query-biased sentence retrieval task. We propose a hybrid relevance analysis to evaluate the relevance of a sentence to the query. The summary is created by including sentences with the topmost significances which are measured in terms of sentence relevance and surface feature salience. In addition, a modified Maximal Marginal Relevance is proposed for anti-redundancy. The proposed approach was evaluated with the DUC 2005 corpus and found to perform well with competitive results.
机译:有关问答的许多研究旨在回答事实,定义和传记问题。在大多数情况下,答案会以名称,日期,数量等形式给出。在本文中,我们尝试将多文档摘要和问题解答技术相结合,以生成简短,组织良好的流利摘要,以提供更多相关信息,从而回答现实世界中的复杂问题。该问题通过查询偏向语句检索任务解决。我们提出了一种混合相关性分析,以评估句子与查询的相关性。通过包括具有最高重要意义的句子来创建摘要,这些最高重要性是根据句子相关性和表面特征显着性来衡量的。另外,针对抗冗余提出了修改的最大边际相关性。 DUC 2005语料库对所提出的方法进行了评估,发现该方法在竞争结果方面表现良好。

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