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Building autonomic systems using collaborative reinforcement learning

机译:使用协作强化学习构建自主系统

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This paper presents Collaborative Reinforcement Learning (CRL), a coordination model for online system optimization in decentralized multi-agent systems. In CRL system optimization problems are represented as a set of discrete optimization problems, each of whose solution cost is minimized by model-based reinforcement learning agents collaborating on their solution. CRL systems can be built to provide autonomic behaviours such as optimizing system performance in an unpredictable environment and adaptation to partial failures. We evaluate CRL using an ad hoc routing protocol that optimizes system routing performance in an unpredictable network environment.
机译:本文介绍了协作强化学习(CRL),一种用于分散式多主体系统中在线系统优化的协调模型。在CRL系统中,优化问题表示为一组离散的优化问题,通过基于模型的强化学习代理对其解决方案进行协作,可以将每个解决方案的成本降至最低。可以构建CRL系统以提供自主行为,例如在不可预测的环境中优化系统性能以及适应部分故障。我们使用临时路由协议评估CRL,该协议可在无法预测的网络环境中优化系统路由性能。

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