Manifold-Constrained Adversarial Training for Long-Tailed Robustness via Geometric Alignment

May 04, 2026 ยท Grace Period ยท ๐Ÿ› IJCAI 2026

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Authors Guanmeng Xian, Ning Yang, Philip S. Yu arXiv ID 2605.02183 Category cs.LG: Machine Learning Citations 0 Venue IJCAI 2026
Abstract
Adversarial training is effective on balanced datasets, but its robustness degrades under longtailed class distributions, where tail classes suffer high robust error and unstable decision boundaries. We propose Manifold-Constrained Adversarial Training (MCAT), a unified framework that enforces the semantic validity of adversarial examples by penalizing deviations from class-conditional manifolds in feature space, while promoting balanced geometric separation across classes via an ETF-inspired regularization. We provide theoretical results that link geometric separation to lower bounds on adversarially robust margins, and show that manifold-constrained adversarial risk upperbounds robust risk on high-density semantic regions. Extensive experiments on standard longtailed benchmarks demonstrate consistent improvements in overall, balanced, and tail-class adversarial robustness.
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