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📄 ResearchMay 13, 2026

Tight Sample Complexity Bounds for Entropic Best Policy Identification

We study best-policy identification for finite-horizon risk-sensitive reinforcement learning under the entropic risk measure. Recent work established a constant gap in the exponential horizon dependence between lower and upper bounds on the number of samples required to identify an approximately opt...

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Source

http://arxiv.org/abs/2605.13717v1