How Do Centrality Measures Choose the Root of Trees?

Cristian Riveros, J. Salas, Oskar Skibski
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引用次数: 1

Abstract

Centrality measures are widely used to assign importance to graph-structured data. Recently, understanding the principles of such measures has attracted a lot of attention. Given that measures are diverse, this research has usually focused on classes of centrality measures. In this work, we provide a different approach by focusing on classes of graphs instead of classes of measures to understand the underlying principles among various measures. More precisely, we study the class of trees. We observe that even in \fix{the} case of trees, there is no consensus on which node should be selected as the most central. To analyze the behavior of centrality measures on trees, we introduce a property of \emph{tree rooting} that states a measure selects one or two adjacent nodes as the most important, and the importance decreases from them in all directions. This property is satisfied by closeness centrality but violated by PageRank. We show that, for several centrality measures that root trees, the comparison of adjacent nodes can be inferred by \emph{potential functions} that assess the quality of trees. We use these functions to give fundamental insights on rooting and derive a characterization explaining why some measure root trees. Moreover, we provide an almost liner-time algorithm to compute the root of a graph by using potential functions. Finally, using a family of potential functions, we show that many ways of tree rooting exist with desirable properties.
中心性度量如何选择树的根?
中心性度量被广泛用于分配图结构数据的重要性。最近,了解这些措施的原理引起了很多关注。考虑到测量的多样性,这项研究通常集中在中心性测量的类别上。在这项工作中,我们提供了一种不同的方法,通过关注图类而不是测度类来理解各种测度之间的基本原理。更准确地说,我们研究树的类别。我们观察到,即使在\fix{the}树的情况下,对于哪个节点应该被选为最中心也没有共识。为了分析中心性测度在树上的行为,我们引入了\emph{树生根}的一个性质,即一个测度选择一个或两个相邻的节点作为最重要的节点,并从它们的所有方向上降低重要性。这个属性是由接近中心性满足的,但是PageRank违背了这个属性。我们表明,对于树根的几个中心性度量,相邻节点的比较可以通过评估树质量的\emph{潜在函数}来推断。我们使用这些函数来给出生根的基本见解,并推导出一个表征,解释为什么有些测量根树。此外,我们提供了一个几乎线性时间的算法来计算一个图的根使用势函数。最后,利用一组势函数,我们证明了存在许多具有理想性质的树生根方式。
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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