Cooperation and Competition: Flocking with Evolutionary Multi-Agent Reinforcement Learning

Yunxiao Guo, Xinjia Xie, Runhao Zhao, Chenglan Zhu, Jiangting Yin, Han Long
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引用次数: 1

Abstract

Flocking is a very challenging problem in a multi-agent system; traditional flocking methods also require complete knowledge of the environment and a precise model for control. In this paper, we propose Evolutionary Multi-Agent Reinforcement Learning (EMARL) in flocking tasks, a hybrid algorithm that combines cooperation and competition with little prior knowledge. As for cooperation, we design the agents' reward for flocking tasks according to the boids model. While for competition, agents with high fitness are designed as senior agents, and those with low fitness are designed as junior, letting junior agents inherit the parameters of senior agents stochastically. To intensify competition, we also design an evolutionary selection mechanism that shows effectiveness on credit assignment in flocking tasks. Experimental results in a range of challenging and self-contrast benchmarks demonstrate that EMARL significantly outperforms the full competition or cooperation methods.
合作与竞争:基于进化多智能体强化学习的群集
在多智能体系统中,群集是一个非常具有挑战性的问题。传统的植绒方法还需要完全了解环境和精确的控制模型。在本文中,我们提出了进化多智能体强化学习(EMARL)在群集任务中,这是一种结合合作和竞争的混合算法,很少有先验知识。在合作方面,我们根据boids模型设计agent对群集任务的奖励。而对于竞争,将高适应度的智能体设计为高级智能体,将低适应度的智能体设计为初级智能体,让初级智能体随机继承高级智能体的参数。为了加强竞争,我们还设计了一种进化选择机制,该机制在群集任务的信用分配上显示出有效性。在一系列具有挑战性和自我对比的基准测试中,实验结果表明,EMARL显著优于完全竞争或合作方法。
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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