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Learning to Rank Answers to Non-Factoid Questions from Web Collections

机译:从Web集合中学习对非事实类问题的答案进行排名

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This work investigates the use of linguistically motivated features to improve search, in particular for ranking answers to non-factoid questions. We show that it is possible to exploit existing large collections of question–answer pairs (from online social Question Answering sites) to extract such features and train ranking models which combine them effectively. We investigate a wide range of feature types, some exploiting natural language processing such as coarse word sense disambiguation, named-entity identification, syntactic parsing, and semantic role labeling. Our experiments demonstrate that linguistic features, in combination, yield considerable improvements in accuracy. Depending on the system settings we measure relative improvements of 14% to 21% in Mean Reciprocal Rank and [email?protected], providing one of the most compelling evidence to date that complex linguistic features such as word senses and semantic roles can have a significant impact on large-scale information retrieval tasks.
机译:这项工作调查了使用语言动机功能来改善搜索,特别是对非事实问题的答案进行排名。我们证明,有可能利用现有的大量问题-答案对(来自在线社交问答网站)来提取此类特征并训练将它们有效组合的排名模型。我们研究了广泛的特征类型,其中一些利用自然语言处理功能,例如粗略的词义消歧,命名实体标识,句法解析和语义角色标记。我们的实验表明,语言功能相结合可大大提高准确性。根据系统设置,我们测量的平均相对排名和[受电子邮件保护]的相对改善为14%到21%,提供了迄今为止最有说服力的证据之一,表明复杂的语言功能(例如词义和语义角色)可以发挥重要作用对大规模信息检索任务的影响。

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