Sparse eigenvectors of graphs

Oguzhan Teke, P. Vaidyanathan
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引用次数: 2

Abstract

In order to analyze signals defined over graphs, many concepts from the classical signal processing theory have been extended to the graph case. One of these concepts is the uncertainty principle, which studies the concentration of a signal on a graph and its graph Fourier basis (GFB). An eigenvector of a graph is the most localized signal in the GFB by definition, whereas it may not be localized in the vertex domain. However, if the eigenvector itself is sparse, then it is concentrated in both domains simultaneously. In this regard, this paper studies the necessary and sufficient conditions for the existence of 1, 2, and 3-sparse eigenvectors of the graph Laplacian. The provided conditions are purely algebraic and only use the adjacency information of the graph. Examples of both classical and real-world graphs with sparse eigenvectors are also presented.
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图的稀疏特征向量
为了分析在图上定义的信号,经典信号处理理论中的许多概念被推广到图的情况。其中一个概念是不确定性原理,它研究信号在图上的集中及其图的傅立叶基(GFB)。根据定义,图的特征向量是GFB中最局部化的信号,而它可能在顶点域不局部化。然而,如果特征向量本身是稀疏的,那么它同时集中在两个域中。为此,本文研究了图拉普拉斯算子的1、2、3稀疏特征向量存在的充分必要条件。所提供的条件是纯代数的,并且只使用图的邻接信息。本文还给出了具有稀疏特征向量的经典图和现实图的例子。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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