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Activity Number: 276 - Statistical Foundations of Reinforcement Learning
Type: Topic-Contributed
Date/Time: Wednesday, August 11, 2021 : 1:30 PM to 3:20 PM
Sponsor: IMS
Abstract #317066
Title: Dynamic Batch Learning in High-Dimensional Sparse Linear Contextual Bandits
Author(s): Zhimei Ren* and Zhengyuan Zhou
Companies: Stanford University and New York University
Keywords: high-dimensional statistics; contextual bandits; sparsity; dynamic batch learning; LASSO
Abstract:

We study the problem of dynamic batch learning in high-dimensional sparse linear contextual bandits, where a decision maker, under a given maximum-number-of-batch constraint and only able to observe rewards at the end of each batch, can dynamically decide how many individuals to include in the next batch (at the end of the current batch) and what personalized action-selection scheme to adopt within each batch. Such batch constraints are ubiquitous in a variety of practical contexts, including personalized product offerings in marketing and medical treatment selection in clinical trials. We characterize the fundamental learning limit in this problem via a regret lower bound and provide a matching upper bound (up to log factors), thus prescribing an optimal scheme for this problem. To the best of our knowledge, our work provides the first inroad into a theoretical understanding of dynamic batch learning in high-dimensional sparse linear contextual bandits. Notably, even a special case of our result (when no batch constraint is present) yields the first minimax optimal regret bound for standard online learning in high-dimensional linear contextual bandits (for the no-margin case).


Authors who are presenting talks have a * after their name.

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