Fitted Q-iteration in continuous action-space MDPs
Antos, András, Szepesvári, Csaba, Munos, Rémi
–Neural Information Processing Systems
We consider continuous state, continuous action batch reinforcement learning where the goal is to learn a good policy from a sufficiently rich trajectory generated by another policy. We study a variant of fitted Q-iteration, where the greedy action selection is replaced by searching for a policy in a restricted set of candidate policies by maximizing the average action values. We provide a rigorous theoretical analysis of this algorithm, proving what we believe is the first finite-time bounds for value-function based algorithms for continuous state- and action-space problems.
Neural Information Processing Systems
Dec-31-2008