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Incorporating Variability in User Behavior into Systems Based Evaluation

机译:将用户行为的可变性纳入基于系统的评估中

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Click logs present a wealth of evidence about how users interact with a search system. This evidence has been used for many things: learning rankings, personalizing, evaluating effectiveness, and more. But it is almost always distilled into point estimates of feature or parameter values, ignoring what may be the most salient feature of users-their variability. No two users interact with a system in exactly the same way, and even a single user may interact with results for the same query differently depending on information need, mood, time of day, and a host of other factors. We present a Bayesian approach to using logs to compute posterior distributions for probabilistic models of user interactions. Since they are distributions rather than point estimates, they naturally capture variability in the population. We show how to cluster posterior distributions to discover patterns of user interactioas in logs, and discuss how to use the clusters to evaluate search engines according to a user model. Because the approach is Bayesian, our methods can be applied to very large logs (such as those possessed by Web search engines) as well as very small (such as those found in almost any other setting).
机译:点击日志提供了大量有关用户如何与搜索系统交互的证据。该证据已用于许多方面:学习排名,个性化,评估有效性等等。但是,几乎总是将其提炼为特征或参数值的点估计,而忽略了用户可变性最显着的特征。没有两个用户以完全相同的方式与系统进行交互,甚至单个用户也可能会根据信息需求,心情,一天中的时间以及许多其他因素而与同一查询的结果进行不同的交互。我们提出一种使用日志来计算用户交互概率模型的后验分布的贝叶斯方法。由于它们是分布而不是点估计,因此自然可以捕获总体中的变异性。我们将展示如何对后验分布进行聚类以发现日志中用户交互的模式,并讨论如何根据用户模型使用聚类来评估搜索引擎。因为该方法是贝叶斯方法,所以我们的方法可以应用于非常大的日志(例如,Web搜索引擎拥有的日志),也可以应用于非常小的日志(例如,几乎在任何其他设置中都可以找到的日志)。

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