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Optimal Batched Linear Bandits

6 June 2024
Xuanfei Ren
Tianyuan Jin
Pan Xu
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Abstract

We introduce the E4^44 algorithm for the batched linear bandit problem, incorporating an Explore-Estimate-Eliminate-Exploit framework. With a proper choice of exploration rate, we prove E4^44 achieves the finite-time minimax optimal regret with only O(log⁡log⁡T)O(\log\log T)O(loglogT) batches, and the asymptotically optimal regret with only 333 batches as T→∞T\rightarrow\inftyT→∞, where TTT is the time horizon. We further prove a lower bound on the batch complexity of linear contextual bandits showing that any asymptotically optimal algorithm must require at least 333 batches in expectation as T→∞T\rightarrow\inftyT→∞, which indicates E4^44 achieves the asymptotic optimality in regret and batch complexity simultaneously. To the best of our knowledge, E4^44 is the first algorithm for linear bandits that simultaneously achieves the minimax and asymptotic optimality in regret with the corresponding optimal batch complexities. In addition, we show that with another choice of exploration rate E4^44 achieves an instance-dependent regret bound requiring at most O(log⁡T)O(\log T)O(logT) batches, and maintains the minimax optimality and asymptotic optimality. We conduct thorough experiments to evaluate our algorithm on randomly generated instances and the challenging \textit{End of Optimism} instances \citep{lattimore2017end} which were shown to be hard to learn for optimism based algorithms. Empirical results show that E4^44 consistently outperforms baseline algorithms with respect to regret minimization, batch complexity, and computational efficiency.

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