有预测背景的匪帮在线学习

Yongyi Guo, Ziping Xu, Susan Murphy
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引用次数: 0

摘要

我们考虑的是上下文强盗问题,在这个问题中,代理每次只能获得上下文的噪声版本和误差方差(或该方差的估计值)。这种设置的动机来自于广泛的应用,在这些应用中,决策的真实情境是无法观测到的,只能通过潜在的复杂机器学习算法来预测情境。当上下文误差不等时,经典的强盗算法无法实现亚线性遗憾。在这种情况下,我们提出了第一种在温和条件下保证亚线性遗憾的在线算法。其关键思路是将经典统计中的测量误差模型扩展到在线决策环境中,由于策略依赖于有噪声的上下文观测,因此在线决策环境并不复杂。我们在基于合成和真实数字干预数据集的模拟环境中进一步展示了所提方法的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online learning in bandits with predicted context.

We consider the contextual bandit problem where at each time, the agent only has access to a noisy version of the context and the error variance (or an estimator of this variance). This setting is motivated by a wide range of applications where the true context for decision-making is unobserved, and only a prediction of the context by a potentially complex machine learning algorithm is available. When the context error is non-vanishing, classical bandit algorithms fail to achieve sublinear regret. We propose the first online algorithm in this setting with sublinear regret guarantees under mild conditions. The key idea is to extend the measurement error model in classical statistics to the online decision-making setting, which is nontrivial due to the policy being dependent on the noisy context observations. We further demonstrate the benefits of the proposed approach in simulation environments based on synthetic and real digital intervention datasets.

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