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Optimal resource allocation using reinforcement learning for IoT content-centric services

机译:使用IOT内容为中心服务的增强学习优化资源分配

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摘要

The exponential growing rate of the networking technologies has led to a dramatical large scope of the connected computing environment. Internet-of-Things (IoT) is considered an alternative for obtaining high performance by the enhanced capabilities in system controls, resource allocations, data exchanges, and flexible adoptions. However, current IoT is encountering the bottleneck of the resource allocation due to the mismatching networking service quality and complicated service offering environments. This paper concentrates on the issue of resource allocations in IoT and utilizes the satisfactory level of Quality of Experience (QoE) to achieve intelligent content-centric services. A novel approach is proposed by this work, which utilizes the mechanism of Reinforcement Learning (RL) to obtain high accurate QoE in resource allocations. Two RL-based algorithms have been proposed for cost mapping tables creations and optimal resource allocations. Our experiment evaluations have assessed the efficiency of implementing the proposed approach. (C) 2018 Elsevier B.V. All rights reserved.
机译:网络技术的指数增长率导致了所连接的计算环境的显着大范围。物联网(IOT)被认为是通过系统控制,资源分配,数据交换和灵活采用的增强功能获得高性能的替代方案。但是,由于网络服务质量和复杂的服务提供环境不匹配,当前的物联网正在遇到资源分配的瓶颈。本文专注于物联网资源分配问题,利用令人满意的经验质量(QoE)来实现智能内容的服务。这项工作提出了一种新的方法,它利用了加强学习(RL)的机制来获得资源分配中的高准确QoE。已经提出了两种基于RL的算法,用于成本映射表创作和最佳资源分配。我们的实验评估已经评估了实施拟议方法的效率。 (c)2018 Elsevier B.v.保留所有权利。

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