使用强化学习的多智能体系统中通信的出现

M. Mazurowski, J. Zurada
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引用次数: 6

摘要

本文介绍了一种自治代理间通信产生的新方法。提出了一种学习方案,使协作系统中智能体之间能够产生有效的通信。将经典的强化学习框架扩展到多智能体系统。语言能力通过修改代理的策略来建模。为了做到这一点,所谓的语言状态和动作变量被添加来扩展代理的状态和动作空间。语言状态变量表示代理接收的信号,语言动作变量表示代理发送的信号。agent集合根据其发送和接收通信信号的能力分为接收者和发送者。给出了双智能体系统的实验结果。它展示了简单的通信如何与非语言行为同时发展,作为协调代理行为以实现任务的工具。最后,得出结论,该方法可以应用于确保在现实世界中异构的、面向任务的多智能体系统中进行有效的通信。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Emergence of communication in multi-agent systems using reinforcement learning
In this paper, the new approach to the emergence of communication between autonomous agents is introduced. The learning scheme is presented, which allows for emergence of efficient communication between agents in cooperative systems. Classical reinforcement learning framework extended to multi-agent systems is used. Language capabilities are modeled by modifying agents' policy. In order to do this, so called linguistic state and action variables are added to extend agents' state and action spaces. Linguistic state variables represent the signal received by an agent and linguistic action variables represent a signal sent by an agent. Set of agents is divided into receivers and senders on the basis of their ability to send and receive communication signals. The experiment with two-agent system is presented. It is shown how a simple communication evolves simultaneously with a non-linguistic behavior as a tool to coordinate agents actions in order to implement a task. At the end, conclusion is made that presented approach can be applied to ensure an efficient communication within real-world heterogenous, task-oriented multi-agent systems.
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