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User Behavior Driven Ranking without Editorial Judgments

机译:用户行为驱动的排名,无需编辑判断

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We explore the potential of using users click-through logs where no editorial judgment is available to improve the ranking function of a vertical search engine. We base our analysis on the Cumulated Relevance Model, a user behavior model recently proposed as a way to extract relevance signal from click-through logs. We propose a novel way of directly learning the ranking function, effectively by-passing the need to have explicit editorial relevance label for each query-document pair. This approach potentially adjusts more closely the ranking function to a variety of user behaviors both at the individual and at the aggregate levels. We investigate two ways of using behavioral model; First, we consider the parametric approach where we learn the estimates of document relevance and use them as targets for the machine learned ranking schemes. In the second, functional approach, we learn a function that maximizes the behavioral model likelihood, effectively by-passing the need to estimate a substitute for document labels. Experiments using user session data collected from a commercial vertical search engine demonstrate the potential of our approach. While in terms of DCG the editorial model out-performs the behavioral one, online experiments show that the behavioral model is on par -if not superior- to the editorial model. To our knowledge, this is the first report in the Literature of a competitive behavioral model in a commercial setting.
机译:我们探索了在没有编辑判断可用来改善垂直搜索引擎排名功能的情况下使用用户点击日志的潜力。我们的分析基于累积相关性模型,该模型是最近提出的一种用户行为模型,可作为一种从点击率日志中提取相关性信号的方法。我们提出了一种直接学习排名功能的新颖方法,从而有效地绕过了对每个查询文档对都拥有明确的编辑相关性标签的需求。这种方法潜在地将排名功能更紧密地调整为个人级别和总体级别上的各种用户行为。我们研究了使用行为模型的两种方法:首先,我们考虑使用参数化方法,在其中学习文档相关性的估计,并将其用作机器学习排名方案的目标。在第二种功能方法中,我们学习了一种功能,该功能可以最大程度地提高行为模型的可能性,从而有效地绕过了估计文档标签替代品的需求。使用从商业垂直搜索引擎收集的用户会话数据进行的实验证明了我们方法的潜力。尽管就DCG而言,编辑模型的性能优于行为模型,但在线实验表明,行为模型与编辑模型相比具有同等的效果(如果不是更好的话)。据我们所知,这是文献中关于商业环境中竞争行为模型的第一份报告。

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