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Hierarchical Learning for Emergence of Social Norms in Networked Multiagent Systems

机译:网络化多读系统中社会规范出现的分层学习

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In this paper, a hierarchical learning framework is proposed for emergence of social norms in networked multiagent systems. This framework features a bottom level of agents and several levels of supervisors. Agents in the bottom level interact with each other using reinforcement learning methods, and report their information to their supervisors after each interaction. Supervisors then aggregate the reported information and produce guide policies by exchanging information with other supervisors. The guide policies are then passed down to the subordinate agents in order to adjust their learning behaviors heuristically. Experiments are carried out to explore the efficiency of norm emergence under the proposed framework, and results verify that learning from local interactions integrating hierarchical supervision can be an effective mechanism for emergence of social norms.
机译:本文提出了一种分层学习框架,以出现网络多读系统中的社会规范。该框架采用底层代理商和几个级别的监督员。底层的代理商使用加强学习方法相互交互,并在每个互动后向其主管报告他们的信息。监督员然后通过与其他主管交换信息汇总报告的信息并制作指南政策。然后将指南策略传递给下属代理,以便启动他们的学习行为。进行实验,探讨拟议框架下的常规出现的效率,结果验证从整合分层监管的地方互动的学习可以是社会规范的出现的有效机制。

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