rexcoleman/adversarial-ids-ml
Adversarial ML on network IDS: feature controllability constraints reduce attack success 35% and enable architectural defenses that outperform adversarial training. CICIDS2017, 5-seed evaluation, govML-governed.
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Python
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MIT
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Last pushed
Mar 19, 2026
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