Introducing Perturb-ability Score (PS) to Enhance Robustness Against Evasion Adversarial Attacks on ML-NIDS
As network security threats continue to evolve, safeguarding Machine Learning (ML)-based Network Intrusion Detection Systems (NIDS) from adversarial attacks is crucial. This paper introduces the notion of feature perturb-ability and presents a novel Perturb-ability Score (PS) metric that identifies...
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Zusammenfassung: | As network security threats continue to evolve, safeguarding Machine Learning
(ML)-based Network Intrusion Detection Systems (NIDS) from adversarial attacks
is crucial. This paper introduces the notion of feature perturb-ability and
presents a novel Perturb-ability Score (PS) metric that identifies NIDS
features susceptible to manipulation in the problem-space by an attacker. By
quantifying a feature's susceptibility to perturbations within the
problem-space, the PS facilitates the selection of features that are inherently
more robust against evasion adversarial attacks on ML-NIDS during the feature
selection phase. These features exhibit natural resilience to perturbations, as
they are heavily constrained by the problem-space limitations and correlations
of the NIDS domain. Furthermore, manipulating these features may either disrupt
the malicious function of evasion adversarial attacks on NIDS or render the
network traffic invalid for processing (or both). This proposed novel approach
employs a fresh angle by leveraging network domain constraints as a defense
mechanism against problem-space evasion adversarial attacks targeting ML-NIDS.
We demonstrate the effectiveness of our PS-guided feature selection defense in
enhancing NIDS robustness. Experimental results across various ML-based NIDS
models and public datasets show that selecting only robust features (low-PS
features) can maintain solid detection performance while significantly reducing
vulnerability to evasion adversarial attacks. Additionally, our findings verify
that the PS effectively identifies NIDS features highly vulnerable to
problem-space perturbations. |
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DOI: | 10.48550/arxiv.2409.07448 |