Taming "data-hungry" reinforcement learning? Stability in continuous state-action spaces
Machine Learning
2024-01-11 v1 Information Theory
Systems and Control
Systems and Control
math.IT
Optimization and Control
Machine Learning
Abstract
We introduce a novel framework for analyzing reinforcement learning (RL) in continuous state-action spaces, and use it to prove fast rates of convergence in both off-line and on-line settings. Our analysis highlights two key stability properties, relating to how changes in value functions and/or policies affect the Bellman operator and occupation measures. We argue that these properties are satisfied in many continuous state-action Markov decision processes, and demonstrate how they arise naturally when using linear function approximation methods. Our analysis offers fresh perspectives on the roles of pessimism and optimism in off-line and on-line RL, and highlights the connection between off-line RL and transfer learning.
Cite
@article{arxiv.2401.05233,
title = {Taming "data-hungry" reinforcement learning? Stability in continuous state-action spaces},
author = {Yaqi Duan and Martin J. Wainwright},
journal= {arXiv preprint arXiv:2401.05233},
year = {2024}
}