Efficient Signed Graph Sampling via Balancing & Gershgorin Disc Perfect Alignment

Chinthaka Dinesh;Gene Cheung;Saghar Bagheri;Ivan V. Bajić
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Abstract

A basic premise in graph signal processing (GSP) is that a graph encoding pairwise (anti-)correlations of the targeted signal as edge weights is leveraged for graph filtering. Existing fast graph sampling schemes are designed and tested only for positive graphs describing positive correlations. However, there are many real-world datasets exhibiting strong anti-correlations, and thus a suitable model is a signed graph, containing both positive and negative edge weights. In this paper, we propose the first linear-time method for sampling signed graphs, centered on the concept of balanced signed graphs. Specifically, given an empirical covariance data matrix $\bar{{\mathbf {C}}}$, we first learn a sparse inverse matrix ${\mathcal {L}}$, interpreted as a graph Laplacian corresponding to a signed graph ${\mathcal {G}}$. We approximate ${\mathcal {G}}$ with a balanced signed graph ${\mathcal {G}}^{b}$ via fast edge weight augmentation in linear time, where the eigenpairs of Laplacian ${\mathcal {L}}^{b}$ for ${\mathcal {G}}^{b}$ are graph frequencies. Next, we select a node subset for sampling to minimize the error of the signal interpolated from samples in two steps. We first align all Gershgorin disc left-ends of Laplacian ${\mathcal {L}}^{b}$ at the smallest eigenvalue $\lambda _{\min }({\mathcal {L}}^{b})$ via similarity transform ${\mathcal {L}}^{s} = {\mathbf {S}}{\mathcal {L}}^{b} {\mathbf {S}}^{-1}$, leveraging a recent linear algebra theorem called Gershgorin disc perfect alignment (GDPA). We then perform sampling on ${\mathcal {L}}^{s}$ using a previous fast Gershgorin disc alignment sampling (GDAS) scheme. Experiments show that our signed graph sampling method outperformed fast sampling schemes designed for positive graphs on various datasets with anti-correlations.
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通过平衡和Gershgorin圆盘完美对齐高效签名图采样
图信号处理(GSP)的一个基本前提是利用目标信号的图编码成对(反)相关性作为边缘权重来进行图滤波。现有的快速图采样方案仅针对描述正相关的正图设计和测试。然而,有许多真实世界的数据集表现出很强的反相关性,因此一个合适的模型是一个带符号的图,包含正负边权重。在本文中,我们以平衡符号图的概念为中心,提出了第一个采样符号图的线性时间方法。具体来说,给定一个经验协方差数据矩阵$\bar{{\mathbf {C}}}$,我们首先学习一个稀疏逆矩阵${\mathcal {L}}$,将其解释为对应于带符号图${\mathcal {G}}$的图拉普拉斯式。我们在线性时间内通过快速边权增加用平衡符号图${\mathcal {G}}^{b}$近似${\mathcal {G}}$,其中${\mathcal {G}}^{b}$的拉普拉斯${\mathcal {L}}^{b}$的特征对是图频率。接下来,我们选择一个节点子集进行采样,以便在两个步骤中最小化从样本中插值的信号误差。我们首先利用最近的线性代数定理Gershgorin disc perfect alignment (GDPA),通过相似变换${\mathcal {L}}^{s} = {\mathbf {S}}{\mathcal {L}}^{b} {\mathbf {S}}^{-1}$在最小特征值$\lambda _{\min }({\mathcal {L}}^{b})$处对齐拉普拉斯方程${\mathcal {L}}^{b}$的所有Gershgorin disc左端。然后,我们使用先前的快速Gershgorin磁盘对齐采样(GDAS)方案在${\mathcal {L}}^{s}$上执行采样。实验表明,我们的签名图采样方法在各种具有反相关性的数据集上优于为正图设计的快速采样方案。
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