Unifying Offline Causal Inference and Online Bandit Learning for Data Driven Decision

Ye Li, Hong Xie, Yishi Lin, John C.S. Lui
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引用次数: 8

Abstract

A fundamental question for companies with large amount of logged data is: How to use such logged data together with incoming streaming data to make good decisions? Many companies currently make decisions via online A/B tests, but wrong decisions during testing hurt users’ experiences and cause irreversible damage. A typical alternative is offline causal inference, which analyzes logged data alone to make decisions. However, these decisions are not adaptive to the new incoming data, and so a wrong decision will continuously hurt users’ experiences. To overcome the aforementioned limitations, we propose a framework to unify offline causal inference algorithms (e.g., weighting, matching) and online learning algorithms (e.g., UCB, LinUCB). We propose novel algorithms and derive bounds on the decision accuracy via the notion of “regret”. We derive the first upper regret bound for forest-based online bandit algorithms. Experiments on two real datasets show that our algorithms outperform other algorithms that use only logged data or online feedbacks, or algorithms that do not use the data properly.
统一离线因果推理和在线数据驱动决策的强盗学习
对于拥有大量记录数据的公司来说,一个基本问题是:如何将这些记录数据与传入的流数据一起使用,以做出正确的决策?许多公司目前通过在线A/B测试做出决定,但在测试过程中错误的决定会损害用户体验并造成不可逆转的损害。一个典型的替代方案是离线因果推理,它单独分析日志数据以做出决策。然而,这些决策不能适应新的传入数据,因此错误的决策将持续损害用户体验。为了克服上述限制,我们提出了一个框架来统一离线因果推理算法(如加权、匹配)和在线学习算法(如UCB、LinUCB)。我们提出了新的算法,并通过“后悔”的概念推导了决策精度的界限。我们推导了基于森林的在线盗匪算法的第一个上遗憾界。在两个真实数据集上的实验表明,我们的算法优于其他仅使用记录数据或在线反馈的算法,或者没有正确使用数据的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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