Jan Leike et al
We discuss a variant of Thompson sampling for nonparametric reinforcement learning in a countable classes of general stochastic environments.
These environments can be non-Markov, nonergodic, and partially observable. We show that Thompson sampling learns the environment class in the sense that (1) asymptotically its value converges to the optimal value in mean and (2) given a recoverability assumption regret is sublinear.