一种计算GFT中心性的有理图滤波方法

C. Tseng, Su-Ling Lee
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引用次数: 0

摘要

图傅里叶变换(GFT)是分析从各种现实网络中采集的不规则图信号的重要工具。它的应用之一是图形傅里叶变换中心性(GFTC),它被开发出来寻找网络图形表示中的有影响的节点。在传统的GFTC计算方法中,需要计算拉普拉斯矩阵的特征分解,以获得计算GFTC的GFT基。为了降低计算复杂度,本文提出了一种有理图滤波(RGF)方法。其主要技术是利用GFT中的Parseval定理将谱域计算任务转换为顶点域计算任务。采用Pade法和Maclaurin级数展开法,在给定GFTC权函数的情况下,求出了RGF的滤波系数。最后,以台北市地铁为例,验证GFTC指标对地铁网中重要车站的识别效果。
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A Rational Graph Filter Method for GFT Centrality Computation
Graph Fourier transform (GFT) is an important tool for analyzing the irregular graph signals collected from various real-world networks. One of its applications is the graph Fourier transform centrality (GFTC) which has been developed to find the influential nodes in the graphical representations of networks. In the traditional GFTC computation method, the eigen-decomposition of Laplacian matrix needs to be calculated for obtaining the GFT basis to compute GFTC. To reduce the computational complexity, a rational graph filter (RGF) method is presented in this paper. The main technique is that the spectral-domain computational task is converted to the vertex-domain one by using Parseval’s theorem of GFT. The Pade method and Maclaurin series expansion are applied to obtain the filter coefficients of RGF when the weight function of GFTC is specified. Finally, the Taipei metro network is used to demonstrate the effectiveness of GFTC index for identifying the important stations in the metro network.
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