The influence of the broadness of the degree distribution on network's robustness: comparing localized attack and random attack
Xin Yuan, Shuai Shao, H. Eugene Stanley, Shlomo Havlin

TL;DR
This study investigates how the broadness of degree distributions affects network robustness, revealing that broader distributions make networks more vulnerable to localized attacks but more resilient to random failures, with analytical and simulation support.
Contribution
The paper introduces controlled models of degree distribution broadness and compares their effects on network robustness against different attack types, providing new insights into network vulnerability.
Findings
Networks with broader degree distributions are more vulnerable to localized attacks.
Networks with narrower distributions are more vulnerable to random failures.
Broader distributions increase vulnerability to localized attacks when variance exceeds mean.
Abstract
The stability of networks is greatly influenced by their degree distributions and in particular by their broadness. Networks with broader degree distributions are usually more robust to random failures but less robust to localized attacks. To better understand the effect of the broadness of the degree distribution we study here two models where the broadness is controlled and compare their robustness against localized attacks (LA) and random attacks (RA). We study analytically and by numerical simulations the cases where the degrees in the networks follow a Bi-Poisson distribution , and a Gaussian distribution with a normalization constant where . In the Bi-Poisson distribution the broadness is controlled by the…
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