Stochastic Primal-Dual Methods and Sample Complexity of Reinforcement Learning (1612.02516v1)
Abstract: We study the online estimation of the optimal policy of a Markov decision process (MDP). We propose a class of Stochastic Primal-Dual (SPD) methods which exploit the inherent minimax duality of BeLLMan equations. The SPD methods update a few coordinates of the value and policy estimates as a new state transition is observed. These methods use small storage and has low computational complexity per iteration. The SPD methods find an absolute-$\epsilon$-optimal policy, with high probability, using $\mathcal{O}\left(\frac{|\mathcal{S}|4 |\mathcal{A}|2\sigma2 }{(1-\gamma)6\epsilon2} \right)$ iterations/samples for the infinite-horizon discounted-reward MDP and $\mathcal{O}\left(\frac{|\mathcal{S}|4 |\mathcal{A}|2H6\sigma2 }{\epsilon2} \right)$ for the finite-horizon MDP.