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Reinforcement Learning Scheme for Grouping and Characterization of Multi-agent Network

机译:用于分组和特征的加固学习方案

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Several models have been proposed for describing grouping behavior such as bird flocking, terrestrial animal herding, and fish schooling. In these models, a fixed rule has been imposed on each individual a priori for its interactions in a reductive and rigid manner. We have proposed a new framework for self-organized grouping of agents by reinforcement learning. It is important to introduce a learning scheme for developing collective behavior in artificial autonomous distributed systems. This scheme can be expanded to cases in which predators are present. We integrated grouping and anti-predator behaviors into our proposed scheme. The behavior of agents is demonstrated and evaluated in detail through computer simulations, and their grouping and anti-predator behaviors developed as a result of learning are shown to be diverse and robust by changing some parameters of the scheme. In this study, we investigate the network structure of agents in the process of learning these behaviors. From the view point of the complex network, the average shortest path length and clustering coefficient are evaluated through computer simulations.
机译:已经提出了一些模型,用于描述鸟类植绒,陆地动物放牧和鱼类教育等分组行为。在这些模型中,已经对每个单独的固定规则施加了一个以减少和刚性的方式进行互动的先验。通过加强学习,我们提出了一种新的自组织分组代理商的新框架。重要的是要引入用于在人工自主分布式系统中发展集体行为的学习方案。该方案可以扩展到捕食者存在的情况。我们将分组和反捕食者行为整合到我们的拟议计划中。通过计算机仿真详细说明和评估代理的行为,并且由于学习而开发的它们的分组和防捕食行为被改变了该方案的一些参数来实现多样化和稳健。在这项研究中,我们研究了学习这些行为的过程中代理的网络结构。从复杂网络的视点来看,通过计算机仿真评估平均最短路径长度和聚类系数。

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