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Cell Association via Boundary Detection: A Scalable Approach Based on Data-Driven Random Features

机译:通过边界检测单元关联:基于数据驱动的随机功能的可扩展方法

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摘要

The problem of cell association is considered for cellular users present in the field. This has become a challenging problem with the deployment of 5G networks which will share the sub-6 GHz bands with the legacy 4G networks. Instead of taking a network-controlled approach, which may not be scalable with the number of users and may introduce extra delays into the system, we propose a scalable solution in the physical layer by utilizing data that can be collected by a large number of spectrum sensors deployed in the field. More specifically, we model the cell association problem as a nonlinear boundary detection problem and focus on solving this problem using randomized shallow networks for determining the boundaries for location of users associated to each cell. We exploit the power of data-driven modeling to reduce the computational cost of training in the proposed solution for the cell association problem. This is equivalent to choosing the right basis functions in the shallow architecture such that the detection is done with minimal error. Our experiments demonstrate the superiority of this method compared to its data-independent counterparts as well as its computational advantage over kernel methods.
机译:考虑了该领域中存在的蜂窝用户的细胞关联问题。这已成为一个具有挑战性的问题,其中5G网络将与传统4G网络共享Sub-6 GHz频带。而不是采用网络控制的方法,这可能不与用户数量可扩展,并且可以将额外的延迟引入系统中,我们通过利用可以通过大量频谱收集的数据来提出物理层中的可扩展解决方案传感器部署在现场。更具体地,我们将小区结合问题模拟为非线性边界检测问题,并专注于使用随机浅网络来解决该问题,用于确定与每个小区相关联的用户位置的边界。我们利用数据驱动建模的力量,以降低对细胞结合问题提出的解决方案中培训的计算成本。这相当于在浅架构中选择正确的基础函数,使得通过最小的错误进行检测。我们的实验证明了与其独立数据的对应物相比该方法的优越性以及通过内核方法的计算优势。

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