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Regret of exploratory policy improvement and qqq-learning

2 November 2024
Wenpin Tang
X. Zhou
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Abstract

We study the convergence of qqq-learning and related algorithms introduced by Jia and Zhou (J. Mach. Learn. Res., 24 (2023), 161) for controlled diffusion processes. Under suitable conditions on the growth and regularity of the model parameters, we provide a quantitative error and regret analysis of both the exploratory policy improvement algorithm and the qqq-learning algorithm.

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