聚合邻接矩阵的非负特征向量作为有向图的中心性度量

IF 1.3 4区 社会学 Q3 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Journal of Mathematical Sociology Pub Date : 2017-06-07 DOI:10.1080/0022250X.2017.1328680
Neng-pin Lu
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引用次数: 4

摘要

特征向量中心性是一种常用的度量方法,它使用邻接矩阵的主特征向量来区分图中节点的重要性。为了找到主特征向量,通常采用从随机初始向量迭代的幂方法。在本文中,我们考虑有向图的邻接矩阵,并根据图的强连通分量选择合适的初始向量,从而可以找到包括主向量在内的非负特征向量。因此,为了聚合非负特征向量,我们提出了一种加权的中心性度量,称为聚合特征向量中心性。通过相关强连通分量的可达性来加权每个非负特征向量,我们可以获得在有向图中遵循状态层次的度量。
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Aggregating nonnegative eigenvectors of the adjacency matrix as a measure of centrality for a directed graph
ABSTRACT Eigenvector centrality is a popular measure that uses the principal eigenvector of the adjacency matrix to distinguish importance of nodes in a graph. To find the principal eigenvector, the power method iterating from a random initial vector is often adopted. In this article, we consider the adjacency matrix of a directed graph and choose suitable initial vectors according to strongly connected components of the graph instead so that nonnegative eigenvectors, including the principal one, can be found. Consequently, for aggregating nonnegative eigenvectors, we propose a weighted measure of centrality, called the aggregated-eigenvector centrality. Weighting each nonnegative eigenvector by the reachability of the associated strongly connected component, we can obtain a measure that follows a status hierarchy in a directed graph.
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来源期刊
Journal of Mathematical Sociology
Journal of Mathematical Sociology 数学-数学跨学科应用
CiteScore
2.90
自引率
10.00%
发文量
5
审稿时长
>12 weeks
期刊介绍: The goal of the Journal of Mathematical Sociology is to publish models and mathematical techniques that would likely be useful to professional sociologists. The Journal also welcomes papers of mutual interest to social scientists and other social and behavioral scientists, as well as papers by non-social scientists that may encourage fruitful connections between sociology and other disciplines. Reviews of new or developing areas of mathematics and mathematical modeling that may have significant applications in sociology will also be considered. The Journal of Mathematical Sociology is published in association with the International Network for Social Network Analysis, the Japanese Association for Mathematical Sociology, the Mathematical Sociology Section of the American Sociological Association, and the Methodology Section of the American Sociological Association.
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