AI RESEARCH
DRIFT: Drift-Resilient Invariant-Feature Transformer for DGA Detection
arXiv CS.LG
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ArXi:2605.10436v1 Announce Type: cross Domain Generation Algorithms (DGAs) evolve continuously to evade botnet detection, posing a persistent challenge for dependable network defense. While deep learning-based detectors achieve strong performance under static conditions, they suffer severe degradation when facing temporal drift. Through a 9-year longitudinal study (2017-2025), we empirically show that state-of-the-art character- and word-based DGA classifiers rapidly lose effectiveness as new DGA variants emerge.