基于子图的中心性测度的绝对表达性

Andreas Pieris, J. Salas
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引用次数: 0

摘要

在基于图的应用程序中,一个常见的任务是确定(有向或无向)图中最重要的顶点或“中心”顶点,或者根据它们的重要性对图的顶点进行排序。为此,文献中提出了过多的所谓中心性措施。这些方法通过分析底层图的结构来评估图中哪些顶点是最重要的。最近提出了一系列适合于图数据库的中心性度量,这些中心性度量依赖于以下简单原则:图中顶点的重要性与围绕它的“相关”连接子图的数量有关;我们把这个家族的成员称为基于子图的中心性度量。虽然已经证明这些措施有几个有利的特性,但它们的绝对表现力在很大程度上仍未被探索。这项工作的目标是通过考虑有向图和无向图,精确地表征基于子图的中心性度量族的绝对表达性。为此,我们描述了任意中心性度量是基于子图的度量,还是相对于诱导排名的基于子图的度量。这些特征为我们提供了技术工具,使我们能够确定已建立的中心性度量是否是基于子图的。这种分类除了本身很有趣之外,还对现有中心性度量之间的结构相似性和差异性提供了有用的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Absolute Expressiveness of Subgraph-Based Centrality Measures
In graph-based applications, a common task is to pinpoint the most important or ``central'' vertex in a (directed or undirected) graph, or rank the vertices of a graph according to their importance. To this end, a plethora of so-called centrality measures have been proposed in the literature. Such measures assess which vertices in a graph are the most important ones by analyzing the structure of the underlying graph. A family of centrality measures that are suited for graph databases has been recently proposed by relying on the following simple principle: the importance of a vertex in a graph is relative to the number of ``relevant'' connected subgraphs surrounding it; we refer to the members of this family as subgraph-based centrality measures. Although it has been shown that such measures enjoy several favourable properties, their absolute expressiveness remains largely unexplored. The goal of this work is to precisely characterize the absolute expressiveness of the family of subgraph-based centrality measures by considering both directed and undirected graphs. To this end, we characterize when an arbitrary centrality measure is a subgraph-based one, or a subgraph-based measure relative to the induced ranking. These characterizations provide us with technical tools that allow us to determine whether well-established centrality measures are subgraph-based. Such a classification, apart from being interesting in its own right, gives useful insights on the structural similarities and differences among existing centrality measures.
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