两种基于语篇树的答案索引方法

Boris A. Galitsky, Dmitry Ilvovsky
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引用次数: 0

摘要

我们探讨了答案的解剖,关于答案中的哪些文本片段值得与问题匹配,哪些不应该匹配。我们运用修辞结构理论构建答案的语篇树,并选择适合索引的基本语篇单位。从提高搜索精度的角度,评估了人工规则选择这些话语单元以及基于web搜索引擎挖掘的自动分类。我们为FAQ和社区QA搜索域形成了两组问答对,并使用它们来评估建议的索引方法,该方法在搜索召回率方面提高了16%。
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Two Discourse Tree - Based Approaches to Indexing Answers
We explore anatomy of answers with respect to which text fragments from an answer are worth matching with a question and which should not be matched. We apply the Rhetorical Structure Theory to build a discourse tree of an answer and select elementary discourse units that are suitable for indexing. Manual rules for selection of these discourse units as well as automated classification based on web search engine mining are evaluated con-cerning improving search accuracy. We form two sets of question-answer pairs for FAQ and community QA search domains and use them for evaluation of the proposed indexing methodology, which delivers up to 16 percent improvement in search recall.
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