The content discusses the importance of evaluating the worst robustness of complex networks. It introduces the concept of Most Destruction Attack (MDA) to assess worst robustness and utilizes a CNN algorithm for rapid prediction. The framework shows promising results in evaluating network resilience under severe attacks.
Robustness is essential for network integrity during failures or attacks. Assessing worst-case scenarios can reveal system vulnerabilities. The MDA approach captures maximum damage potential in networks. A CNN model enhances efficiency in predicting worst robustness.
The study validates the rationality of MDA stacking methods and demonstrates high Maximum Rationality values. Training the quick evaluator on synthetic and empirical networks showcases accurate predictions. The framework's scalability and performance make it valuable for network security design.
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arxiv.org
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