Feb. 13, 2024, 5:42 a.m. | Mark Rowland Li Kevin Wenliang R\'emi Munos Clare Lyle Yunhao Tang Will Dabney

cs.LG updates on arXiv.org arxiv.org

We propose a new algorithm for model-based distributional reinforcement learning (RL), and prove that it is minimax-optimal for approximating return distributions with a generative model (up to logarithmic factors), resolving an open question of Zhang et al. (2023). Our analysis provides new theoretical results on categorical approaches to distributional RL, and also introduces a new distributional Bellman equation, the stochastic categorical CDF Bellman equation, which we expect to be of independent interest. We also provide an experimental study comparing several …

algorithm analysis categorical cs.lg generative minimax near prove question reinforcement reinforcement learning stat.ml

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