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Main Authors: Halder, Budhaditya, Sengupta, Ishan, Chowdhury, Koustav, Khamaru, Koulik
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.10184
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author Halder, Budhaditya
Sengupta, Ishan
Chowdhury, Koustav
Khamaru, Koulik
author_facet Halder, Budhaditya
Sengupta, Ishan
Chowdhury, Koustav
Khamaru, Koulik
contents Statistical inference with bandit data presents fundamental challenges due to adaptive sampling, which violates the independence assumptions underlying classical asymptotic theory. Recent work has identified stability as a sufficient condition for valid inference under adaptivity. This paper develops a systematic theory of stability for bandit algorithms based on stochastic mirror descent, a broad algorithmic framework that includes the widely-used EXP3 algorithm as a special case. Our contributions are threefold. First, we establish a general stability criterion: if the average iterates of a stochastic mirror descent algorithm converge in ratio to a non-random probability vector, then the induced bandit algorithm is stable. This result provides a unified lens for analyzing stability across diverse algorithmic instantiations. Second, we introduce a family of regularized-EXP3 algorithms employing a log-barrier regularizer with appropriately tuned parameters. We prove that these algorithms satisfy our stability criterion and, as an immediate corollary, that Wald-type confidence intervals for linear functionals of the mean parameter achieve nominal coverage. Notably, we show that the same algorithms attain minimax-optimal regret guarantees up to logarithmic factors, demonstrating that inference-enabling stability and learning efficiency are compatible objectives within the mirror descent framework. Third, we establish robustness to corruption: a modified variant of regularized-EXP3 maintains asymptotic normality of empirical arm means even in the presence of $o(T^{1/2})$ adversarial corruptions. This stands in sharp contrast to other stable algorithms such as UCB, which suffer linear regret even under logarithmic levels of corruption.
format Preprint
id arxiv_https___arxiv_org_abs_2603_10184
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Stability and Robustness via Regularization: Bandit Inference via Regularized Stochastic Mirror Descent
Halder, Budhaditya
Sengupta, Ishan
Chowdhury, Koustav
Khamaru, Koulik
Machine Learning
Statistical inference with bandit data presents fundamental challenges due to adaptive sampling, which violates the independence assumptions underlying classical asymptotic theory. Recent work has identified stability as a sufficient condition for valid inference under adaptivity. This paper develops a systematic theory of stability for bandit algorithms based on stochastic mirror descent, a broad algorithmic framework that includes the widely-used EXP3 algorithm as a special case. Our contributions are threefold. First, we establish a general stability criterion: if the average iterates of a stochastic mirror descent algorithm converge in ratio to a non-random probability vector, then the induced bandit algorithm is stable. This result provides a unified lens for analyzing stability across diverse algorithmic instantiations. Second, we introduce a family of regularized-EXP3 algorithms employing a log-barrier regularizer with appropriately tuned parameters. We prove that these algorithms satisfy our stability criterion and, as an immediate corollary, that Wald-type confidence intervals for linear functionals of the mean parameter achieve nominal coverage. Notably, we show that the same algorithms attain minimax-optimal regret guarantees up to logarithmic factors, demonstrating that inference-enabling stability and learning efficiency are compatible objectives within the mirror descent framework. Third, we establish robustness to corruption: a modified variant of regularized-EXP3 maintains asymptotic normality of empirical arm means even in the presence of $o(T^{1/2})$ adversarial corruptions. This stands in sharp contrast to other stable algorithms such as UCB, which suffer linear regret even under logarithmic levels of corruption.
title Stability and Robustness via Regularization: Bandit Inference via Regularized Stochastic Mirror Descent
topic Machine Learning
url https://arxiv.org/abs/2603.10184