Model-free Posterior Sampling via Learning Rate Randomization (2310.18186v1)
Abstract: In this paper, we introduce Randomized Q-learning (RandQL), a novel randomized model-free algorithm for regret minimization in episodic Markov Decision Processes (MDPs). To the best of our knowledge, RandQL is the first tractable model-free posterior sampling-based algorithm. We analyze the performance of RandQL in both tabular and non-tabular metric space settings. In tabular MDPs, RandQL achieves a regret bound of order $\widetilde{\mathcal{O}}(\sqrt{H{5}SAT})$, where $H$ is the planning horizon, $S$ is the number of states, $A$ is the number of actions, and $T$ is the number of episodes. For a metric state-action space, RandQL enjoys a regret bound of order $\widetilde{\mathcal{O}}(H{5/2} T{(d_z+1)/(d_z+2)})$, where $d_z$ denotes the zooming dimension. Notably, RandQL achieves optimistic exploration without using bonuses, relying instead on a novel idea of learning rate randomization. Our empirical study shows that RandQL outperforms existing approaches on baseline exploration environments.
- Daniil Tiapkin (24 papers)
- Denis Belomestny (63 papers)
- Daniele Calandriello (34 papers)
- Eric Moulines (151 papers)
- Alexey Naumov (44 papers)
- Pierre Perrault (12 papers)
- Michal Valko (91 papers)
- Pierre Menard (61 papers)
- Remi Munos (45 papers)