推荐系统的离线A/B测试

Alexandre Gilotte, Clément Calauzènes, Thomas Nedelec, A. Abraham, Simon Dollé
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引用次数: 188

摘要

在线A/B测试通过在真实的生产环境中运行新技术,并在平台的一部分用户上测试其性能,从而评估新技术的影响。众所周知的做法是对历史数据进行初步的离线评估,以更快地迭代新想法,并发现糟糕的政策,以避免损失金钱或破坏系统。对于这种离线评估,我们感兴趣的是能够离线计算新技术产生的性能提升的潜在估计的方法。离线性能可以使用称为反事实或非策略估计器的估计器来测量。传统的反事实估计器,如上限重要性抽样或归一化重要性抽样,在个性化产品推荐系统上进行实验时,表现出令人不满意的偏差方差妥协。为了克服这个问题,我们对这些估计器产生的偏差进行建模,而不是在最坏的情况下将其绑定,这导致我们提出了一个新的反事实估计器。我们提供了不同估计器的基准,显示了它们与在大型商业推荐系统上运行在线a /B测试所观察到的业务指标的相关性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Offline A/B Testing for Recommender Systems
Online A/B testing evaluates the impact of a new technology by running it in a real production environment and testing its performance on a subset of the users of the platform. It is a well-known practice to run a preliminary offline evaluation on historical data to iterate faster on new ideas, and to detect poor policies in order to avoid losing money or breaking the system. For such offline evaluations, we are interested in methods that can compute offline an estimate of the potential uplift of performance generated by a new technology. Offline performance can be measured using estimators known as counterfactual or off-policy estimators. Traditional counterfactual estimators, such as capped importance sampling or normalised importance sampling, exhibit unsatisfying bias-variance compromises when experimenting on personalized product recommendation systems. To overcome this issue, we model the bias incurred by these estimators rather than bound it in the worst case, which leads us to propose a new counterfactual estimator. We provide a benchmark of the different estimators showing their correlation with business metrics observed by running online A/B tests on a large-scale commercial recommender system.
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