Randomized Exploration for Reinforcement Learning with General Value Function Approximation

We propose a model-free reinforcement learning algorithm inspired by the popular randomized least squares value iteration (RLSVI) algorithm as well as the optimism principle. Unlike existing upper-confidence-bound (UCB) based approaches, which are often computationally intractable, our algorithm drives exploration by simply perturbing the training data with judiciously chosen i.i.d. scalar noises. To attain optimistic value function estimation without resorting to a UCB-style bonus, we introduce an optimistic reward sampling procedure. When the value functions can be represented by a function class , our algorithm achieves a worst-case regret bound of where is the time elapsed, is the planning horizon and is the of . In the linear setting, our algorithm reduces to LSVI-PHE, a variant of RLSVI, that enjoys an regret. We complement the theory with an empirical evaluation across known difficult exploration tasks.
View on arXiv