Comprehensive comparison and accuracy of graph metrics in predicting network resilience

Mohammed J. F. Alenazi, J. Sterbenz
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引用次数: 53

Abstract

Graph robustness metrics have been used largely to study the behavior of communication networks in the presence of targeted attacks and random failures. Several researchers have proposed new graph metrics to better predict network resilience and survivability against such attacks. Most of these metrics have been compared to a few established graph metrics for evaluating the effectiveness of measuring network resilience. In this paper, we perform a comprehensive comparison of the most commonly used graph robustness metrics. First, we show how each metric is determined and calculate its values for baseline graphs. Using several types of random graphs, we study the accuracy of each robustness metric in predicting network resilience against centrality-based attacks. The results show three conclusions. First, our path diversity metric has the highest accuracy in predicting network resilience for structured baseline graphs. Second, the variance of node-betweenness centrality has mostly the best accuracy in predicting network resilience for Waxman random graphs. Third, path diversity, network criticality, and effective graph resistance have high accuracy in measuring network resilience for Gabriel graphs.
网络弹性预测中图形指标的综合比较与准确性
图鲁棒性度量已被广泛用于研究通信网络在目标攻击和随机故障存在下的行为。一些研究人员提出了新的图表指标,以更好地预测网络抵御此类攻击的弹性和生存能力。这些指标中的大多数都与一些已建立的图表指标进行了比较,以评估测量网络弹性的有效性。在本文中,我们对最常用的图形鲁棒性指标进行了全面的比较。首先,我们将展示如何确定每个指标并计算其基线图的值。使用几种类型的随机图,我们研究了每个鲁棒性指标在预测网络抵御基于中心性攻击的弹性方面的准确性。研究结果表明:首先,我们的路径多样性指标在预测结构化基线图的网络弹性方面具有最高的准确性。其次,节点间中心性方差对Waxman随机图的网络弹性预测精度最高。第三,路径多样性、网络临界性和有效图阻力在测量加布里埃尔图的网络弹性方面具有较高的准确性。
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