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G-local resource management: Achieving global optimization via local inference without message passing

机译:G本地资源管理:通过本地推理实现全局优化,而无需传递消息

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Resource competition is inevitable in shared-resource systems, as the number of users increases or their resource demands change. In wireless networks, this problem is aggravated due to the existence of co-channel interference. Without appropriate control, harmful competition causes unbalanced user consumption of resources (e.g. starvation), and resource waste due to conflicts and idleness. In this paper we propose a novel framework to effectively manage resources (e.g. shared wireless channels). Compared with the state-of-art global optimization algorithm, our method is superior in terms of eliminating control overhead caused by message passing, achieving competitive performance, and reducing computational complexity. This framework combines the advantages of global and local optimization methods and drives the system toward a global optimum by intelligently exploiting local information.
机译:随着用户数量的增加或他们的资源需求发生变化,共享资源系统中的资源竞争是不可避免的。在无线网络中,由于存在同频道干扰,该问题更加严重。如果没有适当的控制,有害的竞争会导致用户对资源的不均衡消耗(例如饥饿),以及由于冲突和闲置而造成的资源浪费。在本文中,我们提出了一种有效管理资源(例如共享无线信道)的新颖框架。与最新的全局优化算法相比,我们的方法在消除由消息传递引起的控制开销,实现竞争性能以及降低计算复杂度方面具有优势。该框架结合了全局和局部优化方法的优点,并通过智能地利用局部信息来使系统朝着全局最优的方向发展。

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