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Improving the informativeness of verbose queries using summarization techniques for spoken document retrieval

机译:使用摘要技术进行语音文档检索,提高详细查询的信息量

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摘要

Query-by-example information retrieval aims at helping users to find relevant documents accurately when users provide specific query exemplars describing what they are interested in. The query exemplars are usually long and in the form of either a partial or even a full document. However, they may contain extraneous terms (or off-topic information) that would have a negative impact on the retrieval performance. In this paper, we propose to integrate extractive summarization techniques into the retrieval process so as to improve the informativeness of a verbose query exemplar. The original query exemplar is first divided into several sub-queries or sentences. To construct a new concise query exemplar, summarization techniques are then employed to select a salient subset of sub-queries. Experiments on the TDT Chinese collection show that the proposed approach is indeed effective and promising.
机译:逐个示例的信息检索旨在帮助用户准确地查找相关文档,当用户提供描述他们感兴趣的特定查询示范。查询示例通常是长期甚至完整文档的形式。但是,它们可能包含对检索性能产生负面影响的无关术语(或偏离主题信息)。在本文中,我们建议将提取摘要技术集成到检索过程中,以提高详细查询示范的信息。原始查询示例首先分为几个子查询或句子。为了构建新的简明查询示例,然后采用摘要技术来选择子查询的突出子集。 TDT中文汇集的实验表明,该方法确实有效和有前途。

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