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AAMAS 2023

Enhancing Reinforcement Learning Agents with Local Guides

Conference Paper Session 3A: Reinforcement Learning Autonomous Agents and Multiagent Systems

Abstract

This paper addresses the problem of integrating local guide policies into a Reinforcement Learning agent. For this, we show how to adapt existing algorithms to this setting before introducing a novel algorithm based on a noisy policy-switching procedure. This approach builds on a proper Approximate Policy Evaluation (APE) scheme to provide a perturbation that carefully leads the local guides towards better actions. We evaluated our method on a set of classical Reinforcement Learning problems, including safetycritical systems where the agent cannot enter some areas at the risk of triggering catastrophic consequences. In all the proposed environments, our agent proved to be efficient at leveraging those policies to improve the performance of any APE-based Reinforcement Learning algorithm, especially in its first learning stages.

Authors

Keywords

  • Reinforcement Learning
  • Local Guides
  • External Knowledge
  • Sample Efficiency

Context

Venue
International Conference on Autonomous Agents and Multiagent Systems
Archive span
2002-2025
Indexed papers
7403
Paper id
112765984547966276