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Policy mirror descent for reinforcement learning: Linear convergence, new sampling complexity, and generalized problem classes.Mathematical programming, 198(1):1059–1106, 2023

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Value Mirror Descent for Reinforcement Learning

math.OC · 2026-04-07 · unverdicted · novelty 5.0

Value mirror descent integrates mirror descent into value iteration for discounted MDPs, delivering near-optimal sample complexity of order |S||A|(1-γ)^{-3}ε^{-2} for general convex regularizers and bounded Bregman divergence between generated and optimal policies.

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  • Value Mirror Descent for Reinforcement Learning math.OC · 2026-04-07 · unverdicted · none · ref 16

    Value mirror descent integrates mirror descent into value iteration for discounted MDPs, delivering near-optimal sample complexity of order |S||A|(1-γ)^{-3}ε^{-2} for general convex regularizers and bounded Bregman divergence between generated and optimal policies.