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MUSETS: Diversity-Aware Web Query Suggestions for Shortening User Sessions

机译:musets:分集感知的Web查询缩短用户会话的建议

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We propose MUSETS (multi-session total shortening) - a novel formulation of the query suggestion task, specified as an optimization problem. Given an ambiguous user query, the goal is to propose the user a set of query suggestions that optimizes a diversity-aware objective function. The function models the expected number of query reformulations that a user would save until reaching a satisfactory query formulation. The function is diversity-aware, as it naturally enforces high coverage of different alternative continuations of the user session. For modeling the topics covered by the queries, we also use an extended query representation based on entities extracted from Wikipedia. We apply a machine learning approach to learn the model on a set of user sessions to be subsequently used for queries that are under-represented in historical query logs and present an evaluation of the approach.
机译:我们提出肌肉(多项会计总缩短) - 一种新的查询建议任务的制定,指定为优化问题。鉴于模糊的用户查询,目标是提出用户一组查询建议,这些建议优化了分集感知的目标函数。该函数模拟用户将保存直到达到令人满意的查询配方之​​前的预期查询重新装修次数。该功能是分集感知的,因为它自然地强制执行了用户会话的不同替代延续的高覆盖范围。为了对查询所涵盖的主题进行建模,我们还基于从维基百科提取的实体使用扩展查询表示。我们应用机器学习方法,以便在一组用户会话上学习模型,随后用于在历史查询日志中表示的查询并呈现对方法的评估。

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