Batched Online Contextual Sparse Bandits with Sequential Inclusion of Features

Rowan Swiers, Subash Prabanantham, Andrew Maher
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Abstract

Multi-armed Bandits (MABs) are increasingly employed in online platforms and e-commerce to optimize decision making for personalized user experiences. In this work, we focus on the Contextual Bandit problem with linear rewards, under conditions of sparsity and batched data. We address the challenge of fairness by excluding irrelevant features from decision-making processes using a novel algorithm, Online Batched Sequential Inclusion (OBSI), which sequentially includes features as confidence in their impact on the reward increases. Our experiments on synthetic data show the superior performance of OBSI compared to other algorithms in terms of regret, relevance of features used, and compute.
连续包含特征的分批在线上下文稀疏匪帮
多臂匪徒(MABs)被越来越多地应用于在线平台和电子商务中,以优化个性化用户体验的决策制定。在这项工作中,我们重点研究了线性奖励、稀疏性和批量数据条件下的情境匪帮问题。我们使用一种新颖的算法--在线分批连续包容(OBSI)--将无关特征排除在决策过程之外,从而解决了公平性的难题。在合成数据上进行的实验表明,与其他算法相比,OBSI 在遗憾度、使用特征的相关性和计算量方面都表现出色。
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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