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Multi-agent Reinforcement Learning in Network Management

机译:网络管理中的多主体强化学习

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This paper outlines research in progress intended to contribute to the autonomous management of networks, allowing policies to be dynamically adjusted and aligned to application directives according to the available resources. Many existing management approaches require static a priori policy deployment but our proposal goes one step further modifying initially deployed policies by learning from the system behaviour. We use a hierarchical policy model to show the connection of high level goals with network level configurations. We also intend to solve two important and mostly forgotten issues: the system has multiple goals some of them contradictory and we will show how to overcome it; and, some current works optimize one network element but being unaware of other participants; instead, our proposed scheme takes into account various social behaviours, such as cooperation and competition among different elements.
机译:本文概述了正在进行的研究,旨在促进网络的自治管理,允许根据可用资源动态调整策略并使之与应用程序指令保持一致。许多现有的管理方法都需要静态先验策略部署,但是我们的建议又向前迈了一步,即通过学习系统行为来进一步修改初始部署的策略。我们使用分层策略模型来显示高级目标与网络级配置的连接。我们还打算解决两个重要且最常被遗忘的问题:系统有多个目标,其中一些是相互矛盾的,我们将展示如何克服它;并且,一些当前的工作优化了一个网络元素,但没有意识到其他参与者;相反,我们提出的方案考虑了各种社会行为,例如不同要素之间的合作与竞争。

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