GuideBoot: Guided Bootstrap for Deep Contextual Banditsin Online Advertising

Feiyang Pan, Haoming Li, Xiang Ao, Wei Wang, Yanrong Kang, Ao Tan, Qing He
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Abstract

The exploration/exploitation (E&E) dilemma lies at the core of interactive systems such as online advertising, for which contextual bandit algorithms have been proposed. Bayesian approaches provide guided exploration via uncertainty estimation, but the applicability is often limited due to over-simplified assumptions. Non-Bayesian bootstrap methods, on the other hand, can apply to complex problems by using deep reward models, but lack a clear guidance to the exploration behavior. It still remains largely unsolved to develop a practical method for complex deep contextual bandits. In this paper, we introduce Guided Bootstrap (GuideBoot), combining the best of both worlds. GuideBoot provides explicit guidance to the exploration behavior by training multiple models over both real samples and noisy samples with fake labels, where the noise is added according to the predictive uncertainty. The proposed method is efficient as it can make decisions on-the-fly by utilizing only one randomly chosen model, but is also effective as we show that it can be viewed as a non-Bayesian approximation of Thompson sampling. Moreover, we extend it to an online version that can learn solely from streaming data, which is favored in real applications. Extensive experiments on both synthetic tasks and large-scale advertising environments show that GuideBoot achieves significant improvements against previous state-of-the-art methods.
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GuideBoot:在线广告中深度上下文强盗的引导引导
探索/利用(E&E)困境是在线广告等互动系统的核心,为此已经提出了上下文强盗算法。贝叶斯方法通过不确定性估计提供指导性探索,但由于过度简化的假设,其适用性往往受到限制。另一方面,非贝叶斯自举方法可以通过使用深度奖励模型来应用于复杂问题,但缺乏对探索行为的明确指导。开发一种实用的方法来处理复杂的深层上下文强盗,在很大程度上仍然没有得到解决。在本文中,我们介绍了引导引导(GuideBoot),结合了两者的优点。GuideBoot通过在真实样本和带有假标签的噪声样本上训练多个模型,根据预测的不确定性添加噪声,从而为探索行为提供明确的指导。所提出的方法是有效的,因为它可以通过只使用一个随机选择的模型来即时做出决策,但也有效,因为我们表明它可以被视为汤普森抽样的非贝叶斯近似。此外,我们将其扩展到可以仅从流数据中学习的在线版本,这在实际应用中很受欢迎。在合成任务和大规模广告环境中进行的大量实验表明,与之前最先进的方法相比,GuideBoot取得了显著的进步。
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