Towards Generalized Certified Robustness with Multi-Norm Training

Abstract

Existing certified training methods can only train models to be robust against a certain perturbation type (e.g. $l_\infty$ or $l_2$). However, an $l_\infty$ certifiably robust model may not be certifiably robust against $l_2$ perturbation (and vice versa) and also has low robustness against other perturbations (e.g. geometric and patch transformation). By constructing a theoretical framework to analyze and mitigate the tradeoff, we propose the first multi-norm certified training framework \textbf{CURE}, consisting of several multi-norm certified training methods, to attain better \emph{union robustness} when training from scratch or fine-tuning a pre-trained certified model. Inspired by our theoretical findings, we devise bound alignment and connect natural training with certified training for better union robustness. Compared with SOTA-certified training, \textbf{CURE} improves union robustness to $32.0\%$ on MNIST, $25.8\%$ on CIFAR-10, and $10.6\%$ on TinyImagenet across different epsilon values. It leads to better generalization on a diverse set of challenging unseen geometric and patch perturbations to $6.8\%$ and $16.0\%$ on CIFAR-10. Overall, our contributions pave a path towards \textit{generalized certified robustness}.

Cite

Text

Jiang et al. "Towards Generalized Certified Robustness with Multi-Norm Training." Transactions on Machine Learning Research, 2026.

Markdown

[Jiang et al. "Towards Generalized Certified Robustness with Multi-Norm Training." Transactions on Machine Learning Research, 2026.](https://mlanthology.org/tmlr/2026/jiang2026tmlr-generalized/)

BibTeX

@article{jiang2026tmlr-generalized,
  title     = {{Towards Generalized Certified Robustness with Multi-Norm Training}},
  author    = {Jiang, Enyi and Cheung, David Shu and Singh, Gagandeep},
  journal   = {Transactions on Machine Learning Research},
  year      = {2026},
  url       = {https://mlanthology.org/tmlr/2026/jiang2026tmlr-generalized/}
}