Applied Sciences (Aug 2023)

Location-Aware Measurement for Cyber Mimic Defense: You Cannot Improve What You Cannot Measure

  • Zhe Huang,
  • Yali Yuan,
  • Jiale Fu,
  • Jiajun He,
  • Hongyu Zhu,
  • Guang Cheng

DOI
https://doi.org/10.3390/app13169213
Journal volume & issue
Vol. 13, no. 16
p. 9213

Abstract

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Cyber mimic defense is designed to ensure endogenous security, effectively countering unknown vulnerabilities and backdoors, thereby addressing a significant challenge in cyberspace. However, the immense scale of real-world networks and their intricate topology pose challenges for measuring the efficacy of cyber mimic defense. To capture and quantify defense performance within specific segments of these expansive networks, we embrace a partitioning approach that subdivides large networks into smaller regions. Metrics are then established within an objective space constructed on these smaller regions. This approach enables the establishment of several fine-grained metrics that offer a more nuanced measurement of cyber mimic defense deployed in complex networks. For example, the common-mode index is introduced to highlight shared vulnerabilities among diverse nodes, the transfer probability computes the likelihood of risk propagation among nodes, and the failure risk assesses the likelihood of cyber mimic defense technology failure within individual nodes or entire communities. Furthermore, we provide proof of the convergence of the transfer probability. A multitude of simulations are conducted to validate the reliability and applicability of the proposed metrics.

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