带变压器的双层多智能体评价方法

Tianjiao Wan, Haibo Mi, Zijian Gao, Yuanzhao Zhai, Bo Ding, Dawei Feng
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引用次数: 0

摘要

近年来,深度多智能体强化学习方法取得了很大的进展,其中包括多智能体行为者批评方法。然而,值得注意的是,在多代理行为者批评方法和最先进的基于价值的方法之间存在性能差距。本文分析了企业绩效不佳的原因,并将其归结为贡献错配和不加区分的引导问题。为了克服这些问题,我们引入了一种新的双层多智能体行为者评价强化学习方法,称为BMT。具体而言,我们提出了一种简单而高效的双层优化机制来学习全局评论家和特定于代理的评论家,从而共同指导策略更新。此外,我们采用基于变压器的模型作为策略网络来解耦复杂的关系并生成灵活的策略。BMT也足够通用,可以插入任何actor-critic多智能体强化学习方法,如MAPPO,并为其配备强表达。在包括多智能体粒子环境和一组具有挑战性的《星际争霸2》微管理任务在内的多个基准测试中,大规模的实证实验表明,基于bmt的多智能体强化学习方法比最先进的行为者批评方法和基于价值的方法取得了更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bi-level Multi-Agent Actor-Critic Methods with ransformers
Recently, deep multi-agent reinforcement learning methods have witnessed great progress, including multi-agent actor-critic methods. However, it’s worth noticing there is a performance gap between multi-agent actor-critic methods and state-of-the-art value-based methods. In this paper, we investigate the causes and attribute inferior performance to issues of contribution-mismatch and indiscriminate guidance. To overcome these problems, we introduce a novel bi-level multi-agent actorcritic reinforcement learning approach with transformers, called BMT. Specifically, we propose a simple but efficient bi-level optimization mechanism to learn both global critic and agentspecific critic, thus jointly guiding the policy update. In addition, we adopt the transformer-based model as the policy network to decouple complicated relationships and generate flexible policy. BMT is also general enough to be plugged into any actor-critic multi-agent reinforcement learning approach, such as MAPPO, and equips it with strong expression. On multiple benchmarks including multi-agent particle environments and a challenging set of StarCraft II micromanagement tasks, large-scale empirical experiments demonstrate that BMT-based multi-agent reinforcement learning methods achieve superior performance over both state-of-the-art actor-critic and value-based approaches.
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