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JAAMAS 2022

Learning by reusing previous advice: a memory-based teacher–student framework

Journal Article OriginalPaper Artificial Intelligence · Multi-Agent Systems

Abstract

Abstract Reinforcement Learning (RL) has been widely used to solve sequential decision-making problems. However, it often suffers from slow learning speed in complex scenarios. Teacher–student frameworks address this issue by enabling agents to ask for and give advice so that a student agent can leverage the knowledge of a teacher agent to facilitate its learning. In this paper, we consider the effect of reusing previous advice, and propose a novel memory-based teacher–student framework such that student agents can memorize and reuse the previous advice from teacher agents. In particular, we propose two methods to decide whether previous advice should be reused: Q-Change per Step that reuses the advice if it leads to an increase in Q-values, and Decay Reusing Probability that reuses the advice with a decaying probability. The experiments on diverse RL tasks (Mario, Predator–Prey and Half Field Offense) confirm that our proposed framework significantly outperforms the existing frameworks in which previous advice is not reused.

Authors

Keywords

  • Reinforcement learning
  • Multi-agent learning
  • Action advising
  • Teacher–student

Context

Venue
Autonomous Agents and Multi-Agent Systems
Archive span
2005-2026
Indexed papers
940
Paper id
977574020406973311