树图上经典和指数接近度的分布式计算

Wei Wang, Choon Yik Tang
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引用次数: 17

摘要

接近中心性是一种基本的中心性度量,它根据节点到所有其他节点的距离来表征节点在网络中的中心位置。在本文中,我们讨论了该度量的两个变体的分布式计算,称为经典接近度和指数接近度,它们在如何考虑距离方面有所不同。对于每个变体,我们构建了连续时间和离散时间分布式算法,使用该算法,无向和无权树图中的节点可以通过仅与邻居对话,执行简单的同构更新规则和消耗最小的物理内存来协作确定自己的亲密度。我们证明了每个算法都是一个网络动力系统,其仿射状态方程具有唯一的平衡点,该平衡点总是指数稳定或有限时间稳定,其输出方程在平衡点处总是产生未知的接近度,从而解决了问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distributed computation of classic and exponential closeness on tree graphs
Closeness centrality is a basic centrality measure that characterizes how centrally located a node is, within a network, based on its distances to all other nodes. In this paper, we address the distributed computation of two variants of this measure, known as classic closeness and exponential closeness, which differ in how the distances are taken into account. For each variant, we construct continuous- and discrete-time distributed algorithms, with which nodes in an undirected and unweighted tree graph can cooperatively determine their own closeness by talking only to neighbors, executing simple homogeneous update rules, and consuming minimal physical memories. We show that each algorithm is a networked dynamical system whose affine state equation has a unique equilibrium point that is always exponentially or finite-time stable, and whose output equation at the equilibrium point always yields the unknown closeness, thereby solving the problem.
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