Abstract

We consider the problems of learning the optimal action-value function and the optimal policy in discounted-reward Markov decision processes (MDPs). We prove new PAC bounds on the sample-complexity of two well-known model-based reinforcement learning (RL) algorithms in the presence of a generative model of the MDP: value iteration and policy iteration. The first result indicates that for an MDP with N state-action pairs and the discount factor ??[0,1) only O(Nlog(N/?)/((1??)3 ? 2)) state-transition samples are required to find an ?-optimal estimation of the action-value function with the probability (w.p.) 1??. Further, we prove that, for small values of ?, an order of O(Nlog(N/?)/((1??)3 ? 2)) samples is required to find an ?-optimal policy w.p. 1??. We also prove a matching lower bound of ?(Nlog(N/?)/((1??)3 ? 2)) on the sample complexity of estimating the optimal action-value function with ? accuracy. To the best of our knowledge, this is the first minimax result on the sample complexity of RL: the upper bounds match the lower bound in terms of N, ?, ? and 1/(1??) up to a constant factor. Also, both our lower bound and upper bound improve on the state-of-the-art in terms of their dependence on 1/(1??).

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