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Unbiased Offline Evaluation of Contextual-bandit-based News Article Recommendation Algorithms

机译:基于语境匪盗新闻文章推荐算法的无偏见的离线评估

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Contextual bandit, algorithms have become popular for online recommendation systems such as Digg, Yahoo! Buzz, and news recommendation in general. Offline evaluation of the effectiveness of new algorithms in these applications is critical for protecting online user experiences but very challenging due to their "partial-label" nature. Common practice is to create a simulator which simulates the online environment for the problem at hand and then run an algorithm against this simulator. However, creating simulator itself is often difficult and modeling bias is usually unavoidably introduced. In this paper, we introduce a replay methodology for contextual bandit algorithm evaluation. Different from simulator-based approaches, our method is completely data-driven and very easy to adapt to different applications. More importantly, our method can provide provably unbiased evaluations. Our empirical results on a large-scale news article recommendation dataset collected from Yahoo! Front Page conform well with our theoretical results. Furthermore, comparisons between our offline replay and online bucket evaluation of several contextual bandit algorithms, show accuracy and effectiveness of our offline evaluation method.
机译:上下文强盗,算法已成为在线推荐系统的流行,例如Digg,Yahoo!嗡嗡声,以及新闻建议。离线评估这些应用程序中新算法的有效性对于保护在线用户体验至关重要,但由于其“部分标签”性质,非常具有挑战性。常见做法是创建一个模拟器,用于模拟手头问题的在线环境,然后对此模拟器运行算法。然而,创建模拟器本身通常是困难和建模的偏置通常是不可避免的。在本文中,我们介绍了用于上下文强盗算法评估的重播方法。不同于基于模拟器的方法,我们的方法是完全数据驱动的,非常容易适应不同的应用。更重要的是,我们的方法可以提供可怕的无偏的评估。我们对大型新闻文章的经验结果来自Yahoo!收集的数据集。首页符合我们的理论结果。此外,我们的离线重播和在线桶评估的比较了多个上下文强盗算法,显示了我们离线评估方法的准确性和有效性。

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