哪些网络最不容易发生级联故障?

L. Blume, D. Easley, J. Kleinberg, Robert D. Kleinberg, É. Tardos
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引用次数: 101

摘要

通过网络的级联故障的传播是一个在许多领域都会出现的问题:在金融危机期间在金融机构之间传播的传染性故障,在大范围停电期间通过电网或通信网络的节点传播,或者在流行病爆发期间通过人群传播。在这里,我们研究了一个阈值传染的自然模型:每个节点被分配一个独立于底层分布的数值阈值,一旦它的失败邻居的数量达到这个阈值,它就会失败。尽管公式很简单,但分析由任意阈值分布引起的故障过程非常具有挑战性,甚至关于哪些图对这些模型中的级联故障最有弹性的定性问题也难以解决。在此,我们开发了一套新的技术来分析该模型下任意图中节点的失效概率,并在给定分布中绘制阈值时,根据图中任意节点的最大失效概率来比较不同的图。当我们考虑这些阈值在不同图上引起的风险时,我们发现阈值分布的空间具有惊人的丰富结构:阈值分布的微小变化可能有利于具有最大聚类结构(即,派系)的图,具有最大分支结构(树)的图,甚至是中间杂交的图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Which Networks are Least Susceptible to Cascading Failures?
The spread of a cascading failure through a network is an issue that comes up in many domains: in the contagious failures that spread among financial institutions during a financial crisis, through nodes of a power grid or communication network during a widespread outage, or through a human population during the outbreak of an epidemic disease. Here we study a natural model of threshold contagion: each node is assigned a numerical threshold drawn independently from an underlying distribution, and it will fail as soon as its number of failed neighbors reaches this threshold. Despite the simplicity of the formulation, it has been very challenging to analyze the failure processes that arise from arbitrary threshold distributions, even qualitative questions concerning which graphs are the most resilient to cascading failures in these models have been difficult to resolve. Here we develop a set of new techniques for analyzing the failure probabilities of nodes in arbitrary graphs under this model, and we compare different graphs according to the maximum failure probability of any node in the graph when thresholds are drawn from a given distribution. We find that the space of threshold distributions has a surprisingly rich structure when we consider the risk that these thresholds induce on different graphs: small shifts in the distribution of the thresholds can favor graphs with a maximally clustered structure (i.e., cliques), those with a maximally branching structure (trees), or even intermediate hybrids.
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