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Reinforcement signal communication based multiagent reinforcement learning

机译:基于增强信号通信的多主体增强学习

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摘要

Reinforcement learning is the major learning mechanism for an agent to adapt itself to various situations flexibly. However, in a multiagent system environment that has mutual dependency among agents, it Is difficult for a human to setup suitable learning goals for each agent. Therefore, it requires the active and interactive learning function that treats how to coordinate the interaction among other learning agents. This paper presents a new framework of multiagent reinforcement learning to generate and coordinate each learning goal interactively among agents. To realize this, it presents to treat each learning goal as a reinforcement signal that can be communicated among agents. Then the issues of the self-generation of goals and evaluation criteria are discussed.
机译:强化学习是座席灵活地适应各种情况的主要学习机制。然而,在代理之间具有相互依赖性的多代理系统环境中,对于人类而言,难以为每个代理设置合适的学习目标。因此,它需要主动和交互的学习功能,该功能处理如何协调其他学习代理之间的交互。本文提出了一种新的多主体强化学习框架,以在主体之间交互地生成和协调每个学习目标。为了实现这一点,它提出将每个学习目标视为可以在代理之间传递的增强信号。然后讨论了目标自我生成和评估标准的问题。

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