English

Dependency-based targeted attacks in interdependent networks

Physics and Society 2020-08-12 v1 Statistical Mechanics

Abstract

Modern large network systems normally work in cooperation and incorporate dependencies between their components for purposes of efficiency and regulation. Such dependencies may become a major risk since they can cause small scale failures to propagate throughout the system. Thus, the dependent nodes could be a natural target for malicious attacks that aim to exploit these vulnerabilities. Here, we consider for the first time a new type of targeted attacks that are based on the dependency between the networks. We study strategies of attacks that range from dependency-first to dependency-last, where a fraction 1p1-p of the nodes with dependency links, or nodes without dependency links, respectively, are initially attacked. We systematically analyze, both analytically and numerically, the percolation transition of partially interdependent Erd\H{o}s-R\'{e}nyi (ER) networks, where a fraction qq of the nodes in each network are dependent upon nodes the other network. We find that for a broad range of dependency strength qq, `dependency-first' strategy, which intuitively is expected to increase the system's vulnerability, actually leads to a more stable system, in terms of lower critical percolation threshold pcp_c, compared with random attacks of the same size. In contrast, the `dependency-last' strategy leads to a more vulnerable system, i.e., higher pcp_c, compared with a random attack. By exploring the dynamics of the cascading failures initiated by dependency-based attacks, we explain this counter-intuitive effect. Our results demonstrate that the most vulnerable components in a system of interdependent networks are not necessarily the ones that lead to the maximal immediate impact but those which initiate a cascade of failures with maximal accumulated damage.

Keywords

Cite

@article{arxiv.1912.11998,
  title  = {Dependency-based targeted attacks in interdependent networks},
  author = {Dong Zhou and Amir Bashan},
  journal= {arXiv preprint arXiv:1912.11998},
  year   = {2020}
}

Comments

17 pages, 4 figures

R2 v1 2026-06-23T12:57:04.495Z