论文标题
通过双峰故障大小分布预测复杂网络中的级联动力学
Predicting the cascading dynamics in complex networks via the bimodal failure size distribution
论文作者
论文摘要
级联故障作为系统的风险发生在各种现实世界的网络中。级联尺寸分布是系统性级联行为的基本和关键特征。最近的研究工作表明,级联大小的分布是一种双峰形式,表明存在很小的级联反应或大型级联。在本文中,我们旨在了解复杂网络中级联大小的这种双峰分布的特性和形成,并进一步预测最终的级联大小。我们首先发现级联大小的双峰分布在合成网络和真实网络中无处不在。此外,分布在双峰分布右峰的大级联尺寸是由级联级别的第一步的高负载的节点的故障或由初始故障触发的多个回合的级联反应。因此,我们提出了一个混合负载度量(HLM),该指标(HLM)结合了初始损坏节点的负载和最初失败触发的失败节点的负载,以预测级联失败的最终大小。最后,我们通过计算识别属于双峰分布的右和左峰的级联反应的准确性来验证HLM的有效性。结果表明,HLM比合成网络和现实世界网络中常用的网络中心度指标是更好的预测指标。
Cascading failure as a systematic risk occurs in a wide range of real-world networks. Cascade size distribution is a basic and crucial characteristic of systemic cascade behaviors. Recent research works have revealed that the distribution of cascade sizes is a bimodal form indicating the existence of either very small cascades or large ones. In this paper, we aim to understand the properties and formation of such bimodal distribution of cascade sizes in complex networks, and further predict the final cascade size. We first find that the bimodal distribution of cascade sizes is ubiquitous in both synthetic and real networks. Moreover, the large cascade sizes distributed in the right peak of bimodal distribution are resulted from either the failure of nodes with high load at the first step of the cascade or multiple rounds of cascades triggered by the initial failure. Accordingly, we propose a hybrid load metric (HLM), which combines the load of the initial broken node and the load of failed nodes triggered by the initial failure, to predict the final size of cascading failures. Finally, we validate the effectiveness of HLM by computing the accuracy of identifying the cascades belonging to the right and left peaks of the bimodal distribution. The results show that HLM is a better predictor than commonly used network centrality metrics in both synthetic and real-world networks.