SOTAVerified

Adaptive Discretization for Episodic Reinforcement Learning in Metric Spaces

2019-10-17Code Available0· sign in to hype

Sean R. Sinclair, Siddhartha Banerjee, Christina Lee Yu

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

We present an efficient algorithm for model-free episodic reinforcement learning on large (potentially continuous) state-action spaces. Our algorithm is based on a novel Q-learning policy with adaptive data-driven discretization. The central idea is to maintain a finer partition of the state-action space in regions which are frequently visited in historical trajectories, and have higher payoff estimates. We demonstrate how our adaptive partitions take advantage of the shape of the optimal Q-function and the joint space, without sacrificing the worst-case performance. In particular, we recover the regret guarantees of prior algorithms for continuous state-action spaces, which additionally require either an optimal discretization as input, and/or access to a simulation oracle. Moreover, experiments demonstrate how our algorithm automatically adapts to the underlying structure of the problem, resulting in much better performance compared both to heuristics and Q-learning with uniform discretization.

Tasks

Reproductions