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Optimal Graph Filter Design for Large-Scale Random Networks

机译:大规模随机网络的最优图滤波器设计

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摘要

Graph signal processing analyzes signals supported on the nodes of a network with respect to a shift operator matrix that conforms to the graph structure. For shift-invariant graph filters, which are polynomial functions of the shift matrix, the filter response is defined by the value of the filter polynomial at the shift matrix eigenvalues. Thus, information regarding the spectral decomposition of the shift matrix plays an important role in filter design. However, under stochastic conditions leading to uncertain network structure, the eigenvalues of the shift matrix become random, complicating the filter design task. In such case, empirical distribution functions built from the random matrix eigenvalues may exhibit deterministic limiting behavior that can be exploited for problems on large-scale random networks.;Acceleration filters for distributed average consensus dynamics on random networks provide the application covered in this thesis work. The thesis discusses methods from random matrix theory appropriate for analyzing adjacency matrix spectral asymptotics for both directed and undirected random networks, introducing relevant theorems. Network distribution properties that allow computational simplification of these methods are developed, and the methods are applied to important classes of random network distributions. Subsequently, the thesis presents the main contributions, which consist of optimization problems for consensus acceleration filters based on the obtained asymptotic spectral density information. The presented methods cover several cases for the random network distribution, including both undirected and directed networks as well as both constant and switching random networks. These methods also cover two related optimization objectives, asymptotic convergence rate and graph total variation.
机译:图信号处理针对符合图结构的移位算子矩阵分析网络节点上支持的信号。对于作为位移矩阵的多项式函数的位移不变图滤波器,滤波器响应由在位移矩阵特征值处的滤波器多项式的值定义。因此,有关移位矩阵频谱分解的信息在滤波器设计中起着重要作用。然而,在导致网络结构不确定的随机条件下,位移矩阵的特征值变得随机,使滤波器设计任务复杂化。在这种情况下,由随机矩阵特征值构建的经验分布函数可能表现出确定性的限制行为,可用于大规模随机网络中的问题。;随机网络上的分布式平均共识动力学的加速滤波器提供了本文所涉及的应用。本文讨论了随机矩阵理论中适用于分析有向和无向随机网络的邻接矩阵谱渐近的方法,并介绍了相关的定理。开发了可以简化这些方法的计算的网络分布属性,并将这些方法应用于重要类别的随机网络分布。随后,论文提出了主要贡献,其中包括基于获得的渐近谱密度信息的共识加速滤波器的优化问题。提出的方法涵盖了随机网络分布的几种情况,包括无向和有向网络以及恒定和交换随机网络。这些方法还涵盖了两个相关的优化目标,渐近收敛率和图总变化。

著录项

  • 作者

    Kruzick, Stephen M.;

  • 作者单位

    Carnegie Mellon University.;

  • 授予单位 Carnegie Mellon University.;
  • 学科 Electrical engineering.
  • 学位 Ph.D.
  • 年度 2018
  • 页码 131 p.
  • 总页数 131
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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