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A Tractable Algorithm For Finite-Horizon Continuous Reinforcement Learning (1906.11245v1)
Published 26 Jun 2019 in cs.LG and cs.AI
Abstract: We consider the finite horizon continuous reinforcement learning problem. Our contribution is three-fold. First,we give a tractable algorithm based on optimistic value iteration for the problem. Next,we give a lower bound on regret of order $\Omega(T{2/3})$ for any algorithm discretizes the state space, improving the previous regret bound of $\Omega(T{1/2})$ of Ortner and Ryabko \cite{contrl} for the same problem. Next,under the assumption that the rewards and transitions are H\"{o}lder Continuous we show that the upper bound on the discretization error is $const.Ln{-\alpha}T$. Finally,we give some simple experiments to validate our propositions.