Self-Motivated Multi-Agent Exploration

Shaowei Zhang, Jiahang Cao, Lei Yuan, Yang Yu, De-chuan Zhan
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Abstract

In cooperative multi-agent reinforcement learning (CMARL), it is critical for agents to achieve a balance between self-exploration and team collaboration. However, agents can hardly accomplish the team task without coordination and they would be trapped in a local optimum where easy cooperation is accessed without enough individual exploration. Recent works mainly concentrate on agents' coordinated exploration, which brings about the exponentially grown exploration of the state space. To address this issue, we propose Self-Motivated Multi-Agent Exploration (SMMAE), which aims to achieve success in team tasks by adaptively finding a trade-off between self-exploration and team cooperation. In SMMAE, we train an independent exploration policy for each agent to maximize their own visited state space. Each agent learns an adjustable exploration probability based on the stability of the joint team policy. The experiments on highly cooperative tasks in StarCraft II micromanagement benchmark (SMAC) demonstrate that SMMAE can explore task-related states more efficiently, accomplish coordinated behaviours and boost the learning performance.
自激励多智能体探索
在协作式多智能体强化学习(CMARL)中,智能体在自我探索和团队协作之间取得平衡至关重要。然而,如果没有协调,智能体很难完成团队任务,如果没有足够的个体探索,智能体就会陷入容易合作的局部最优。近年来的研究主要集中在智能体的协同探索上,这使得对状态空间的探索呈指数级增长。为了解决这个问题,我们提出了自动机多智能体探索(SMMAE),它旨在通过自适应地在自我探索和团队合作之间找到平衡点来实现团队任务的成功。在SMMAE中,我们为每个智能体训练一个独立的探索策略,以最大化它们自己访问的状态空间。每个智能体根据联合团队策略的稳定性学习可调整的勘探概率。在《星际争霸2》微管理基准(SMAC)中进行的高协作任务实验表明,SMMAE可以更有效地探索任务相关状态,完成协调行为,提高学习性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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