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Learning-Based Constraint Satisfaction With Sensing Restrictions

机译:具有学习限制的基于学习的约束满意度

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In this paper we consider graph-coloring problems, an important subset of general constraint satisfaction problems that arise in wireless resource allocation. We constructively establish the existence of fully decentralized learning-based algorithms that are able to find a proper coloring even in the presence of strong sensing restrictions, in particular sensing asymmetry of the type encountered when hidden terminals are present. Our main analytic contribution is to establish sufficient conditions on the sensing behavior to ensure that the solvers find satisfying assignments with probability one. These conditions take the form of connectivity requirements on the induced sensing graph. These requirements are mild, and we demonstrate that they are commonly satisfied in wireless allocation tasks. We argue that our results are of considerable practical importance in view of the prevalence of both communication and sensing restrictions in wireless resource allocation problems. The class of algorithms analyzed here requires no message-passing whatsoever between wireless devices, and we show that they continue to perform well even when devices are only able to carry out constrained sensing of the surrounding radio environment.
机译:在本文中,我们考虑图着色问题,这是无线资源分配中出现的一般约束满足问题的重要子集。我们建设性地建立了完全分散的基于学习的算法的存在,即使在存在强烈的感知限制(尤其是存在隐藏终端时遇到的类型的感知不对称)的情况下,也能够找到合适的颜色。我们的主要分析贡献是在感测行为上建立足够的条件,以确保求解器找到概率为1的令人满意的作业。这些条件采取诱导感应图上的连通性要求的形式。这些要求是温和的,我们证明在无线分配任务中通常可以满足这些要求。我们认为,鉴于无线资源分配问题中通信和感知限制的普遍性,我们的结果具有相当大的实际意义。此处分析的算法类别不需要在无线设备之间进行任何消息传递,并且我们证明,即使设备仅能够对周围的无线电环境进行受限的感知,它们也可以继续保持良好的性能。

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