基于中心性的顶点移除后随机图的连接性

IF 0.7 4区 数学 Q3 STATISTICS & PROBABILITY Journal of Applied Probability Pub Date : 2024-02-23 DOI:10.1017/jpr.2023.106
Remco van der Hofstad, Manish Pandey
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引用次数: 0

摘要

中心性度量旨在说明谁在网络中是重要的。不同的 "重要 "概念产生了不同的中心度量。在本文中,我们通过研究移除最中心顶点对连通成分数量和巨大成分大小的影响,来研究中心顶点对网络连通性结构的重要性。我们使用局部收敛技术来确定局部收敛图的连通成分极限数量,以及取决于顶点邻域的中心性度量。对于巨大分量的大小,我们证明了一个一般上界。对于匹配下限,我们专门研究了网络科学中最流行的模型之一--配置模型--的度中心性,并证明了移除最高度顶点会最大程度地破坏巨型图。
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Connectivity of random graphs after centrality-based vertex removal
Centrality measures aim to indicate who is important in a network. Various notions of ‘being important’ give rise to different centrality measures. In this paper, we study how important the central vertices are for the connectivity structure of the network, by investigating how the removal of the most central vertices affects the number of connected components and the size of the giant component. We use local convergence techniques to identify the limiting number of connected components for locally converging graphs and centrality measures that depend on the vertex’s neighbourhood. For the size of the giant, we prove a general upper bound. For the matching lower bound, we specialise to the case of degree centrality on one of the most popular models in network science, the configuration model, for which we show that removal of the highest-degree vertices destroys the giant most.
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来源期刊
Journal of Applied Probability
Journal of Applied Probability 数学-统计学与概率论
CiteScore
1.50
自引率
10.00%
发文量
92
审稿时长
6-12 weeks
期刊介绍: Journal of Applied Probability is the oldest journal devoted to the publication of research in the field of applied probability. It is an international journal published by the Applied Probability Trust, and it serves as a companion publication to the Advances in Applied Probability. Its wide audience includes leading researchers across the entire spectrum of applied probability, including biosciences applications, operations research, telecommunications, computer science, engineering, epidemiology, financial mathematics, the physical and social sciences, and any field where stochastic modeling is used. A submission to Applied Probability represents a submission that may, at the Editor-in-Chief’s discretion, appear in either the Journal of Applied Probability or the Advances in Applied Probability. Typically, shorter papers appear in the Journal, with longer contributions appearing in the Advances.
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