We design a new provably efficient algorithm for episodic reinforcement learning with generalized linear function approximation. We analyze the algorithm under a new expressivity assumption that we call "optimistic closure," which is strictly weaker than assumptions from prior analyses for the linear setting. With optimistic closure, we prove that our algorithm enjoys a regret bound of O~(d3T) where d is the dimensionality of the state-action features and T is the number of episodes. This is the first statistically and computationally efficient algorithm for reinforcement learning with generalized linear functions.
@article{arxiv.1912.04136,
title = {Optimism in Reinforcement Learning with Generalized Linear Function Approximation},
author = {Yining Wang and Ruosong Wang and Simon S. Du and Akshay Krishnamurthy},
journal= {arXiv preprint arXiv:1912.04136},
year = {2019}
}