Publication: HIERARCHICAL GAUSSIAN PROCESSES AND STOCHASTIC PAC-BAYESIAN TRANSFORMERS FOR UNCERTAINTYCALIBRATED INTRUSION DETECTION ACROSS CLOUD AND ENTERPRISE NETWORKS
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2025
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We propose a unified uncertainty quantification framework for network intrusion detection systems (NIDS) across heterogeneous environments. The system employs (i) hierarchical Gaussian processes (HGP) with adversarially-robust inducing points for cloud datasets and (ii) stochastic Probably Approximately Correct (PAC)-Bayesian transformers for general NIDS datasets. Both pipelines sustain >94% accuracy under adversarial attacks, and provide epistemic uncertainty for risk-based triage.
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Anaedevha R. N. HIERARCHICAL GAUSSIAN PROCESSES AND STOCHASTIC PAC-BAYESIAN TRANSFORMERS FOR UNCERTAINTY- CALIBRATED INTRUSION DETECTION ACROSS CLOUD AND ENTERPRISE NETWORKS / Anaedevha R. N., Trofimov A. G. // Кибернетика и информационная безопасность "КИБ-2025". Сборник научных трудов.Т.2 - 2025. - С. 44-45