Approximations of the Generalized Inverse of the Graph Laplacian Matrix

Q3 Mathematics
E. Bozzo, Massimo Franceschet
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引用次数: 20

Abstract

We devise methods for finding approximations of the generalized inverse of the graph Laplacian matrix, which arises in many graph-theoretic applications. Finding this matrix in its entirety involves solving a matrix inversion problem, which is resource-demanding in terms of consumed time and memory and hence impractical whenever the graph is relatively large. Our approximations use only a few eigenpairs of the Laplacian matrix and are parametric with respect to this number, so that the user can compromise between effectiveness and efficiency of the approximate solution. We apply the devised approximations to the problem of computing current-flow betweenness centrality on a graph. However, given the generality of the Laplacian matrix, many other applications can be sought. We experimentally demonstrate that the approximations are effective already with a constant number of eigenpairs. These few eigenpairs can be stored with a linear amount of memory in the number of nodes of the graph, and in the realistic case of sparse networks, they can be efficiently computed using one of the many methods for retrieving a few eigenpairs of sparse matrices that abound in the literature.
图拉普拉斯矩阵广义逆的近似
我们设计了求图拉普拉斯矩阵广义逆的近似的方法,它出现在许多图论应用中。要完整地找到这个矩阵需要解决一个矩阵反演问题,这在消耗时间和内存方面是非常耗费资源的,因此当图相对较大时是不切实际的。我们的近似只使用拉普拉斯矩阵的几个特征对,并且是参数化的,因此用户可以在近似解的有效性和效率之间折衷。我们将所设计的近似应用于计算图上的电流中间度中心性问题。然而,考虑到拉普拉斯矩阵的通用性,可以寻求许多其他的应用。实验证明,当特征对数目为常数时,这种近似是有效的。这些特征对可以存储在图节点数量的线性内存中,并且在稀疏网络的实际情况下,可以使用文献中大量检索稀疏矩阵的几个特征对的许多方法之一来有效地计算它们。
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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来源期刊
Internet Mathematics
Internet Mathematics Mathematics-Applied Mathematics
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