Back to Search Start Over

Explainable Action Advising for Multi-Agent Reinforcement Learning

Authors :
Guo, Yue
Campbell, Joseph
Stepputtis, Simon
Li, Ruiyu
Hughes, Dana
Fang, Fei
Sycara, Katia
Publication Year :
2022

Abstract

Action advising is a knowledge transfer technique for reinforcement learning based on the teacher-student paradigm. An expert teacher provides advice to a student during training in order to improve the student's sample efficiency and policy performance. Such advice is commonly given in the form of state-action pairs. However, it makes it difficult for the student to reason with and apply to novel states. We introduce Explainable Action Advising, in which the teacher provides action advice as well as associated explanations indicating why the action was chosen. This allows the student to self-reflect on what it has learned, enabling advice generalization and leading to improved sample efficiency and learning performance - even in environments where the teacher is sub-optimal. We empirically show that our framework is effective in both single-agent and multi-agent scenarios, yielding improved policy returns and convergence rates when compared to state-of-the-art methods<br />Comment: This work has been published by ICRA 2023(979-8-3503-2365-8/23/$31.00 copyright 2023 IEEE)

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2211.07882
Document Type :
Working Paper