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More Than Relevance: High Utility Query Recommendation By Mining Users' Search Behaviors

机译:不仅仅是相关性:通过挖掘用户的搜索行为来推荐高实用性的查询

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Query recommendation plays a critical role in helping users' search. Most, existing approaches on query recommendation aim to recommend relevant queries. However, the ultimate goal of query recommendation is to assist users to reformulate queries so that they can accomplish their search task successfully and quickly. Only considering relevance in query recommendation is apparently not directly toward this goal. In this paper, we argue that it is more important, to directly recommend queries with high utility, i.e., queries that can better satisfy users' information needs. For this purpose,we propose a novel generative model, referred to as Query Utility Model (QUM), to capture query utility by simultaneously modeling users' reformulation and click behaviors. The experimental results on a publicly released query log show that, our approach is more effective in helping users find relevant search results and thus satisfying their information needs.
机译:查询推荐在帮助用户搜索中起着至关重要的作用。关于查询推荐的大多数现有方法旨在推荐相关查询。但是,查询推荐的最终目标是帮助用户重新构造查询,以便他们能够成功,快速地完成搜索任务。仅考虑查询推荐中的相关性显然并不直接实现此目标。在本文中,我们认为直接推荐具有较高效用的查询(即可以更好地满足用户信息需求的查询)更为重要。为此,我们提出了一种新颖的生成模型,称为查询实用程序模型(QUM),以通过同时对用户的重新构造和点击行为进行建模来捕获查询实用程序。在公开发布的查询日志上的实验结果表明,我们的方法在帮助用户找到相关搜索结果从而满足其信息需求方面更有效。

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