Optimal Dynamic Regret by Transformers for Non-Stationary Reinforcement Learning

Main:8 Pages
10 Figures
Bibliography:5 Pages
1 Tables
Appendix:15 Pages
Abstract
Transformers have demonstrated exceptional performance across a wide range of domains. While their ability to perform reinforcement learning in-context has been established both theoretically and empirically, their behavior in non-stationary environments remains less understood. In this study, we address this gap by showing that transformers can achieve nearly optimal dynamic regret bounds in non-stationary settings. We prove that transformers are capable of approximating strategies used to handle non-stationary environments and can learn the approximator in the in-context learning setup. Our experiments further show that transformers can match or even outperform existing expert algorithms in such environments.
View on arXivComments on this paper