Applied Sciences (Oct 2024)

Robust Federated Learning for Mitigating Advanced Persistent Threats in Cyber-Physical Systems

  • Ehsan Hallaji,
  • Roozbeh Razavi-Far,
  • Mehrdad Saif

DOI
https://doi.org/10.3390/app14198840
Journal volume & issue
Vol. 14, no. 19
p. 8840

Abstract

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Malware triage is essential for the security of cyber-physical systems, particularly against Advanced Persistent Threats (APTs). Proper data for this task, however, are hard to come by, as organizations are often reluctant to share their network data due to security concerns. To tackle this issue, this paper presents a secure and distributed framework for the collaborative training of a global model for APT triage without compromising privacy. Using this framework, organizations can share knowledge of APTs without disclosing private data. Moreover, the proposed design employs robust aggregation protocols to safeguard the global model against potential adversaries. The proposed framework is evaluated using real-world data with 15 different APT mechanisms. To make the simulations more challenging, we assume that edge nodes have partial knowledge of APTs. The obtained results demonstrate that participants in the proposed framework can privately share their knowledge, resulting in a robust global model that accurately detects APTs with significant improvement across different model architectures. Under optimal conditions, the designed framework detects almost all APT scenarios with an accuracy of over 90 percent.

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