NoiLin: Improving Adversarial Training and Correcting Stereotype of Noisy Labels

Abstract

Adversarial training (AT) formulated as the minimax optimization problem can effectively enhance the model's robustness against adversarial attacks. The existing AT methods mainly focused on manipulating the inner maximization for generating quality adversarial variants or manipulating the outer minimization for designing effective learning objectives. However, empirical results of AT always exhibit the robustness at odds with accuracy and the existence of the cross-over mixture problem, which motivates us to study some label randomness for benefiting the AT. First, we thoroughly investigate noisy labels (NLs) injection into AT's inner maximization and outer minimization, respectively and obtain some observations on when NL injection benefits AT. Second, based on the observations, we propose a simple but effective method---NoiLIn that randomly injects NLs into training data at each training epoch and dynamically increases the NL injection rate once robust overfitting occurs. Empirically, NoiLIn can significantly mitigate the AT's undesirable issue of robust overfitting and even further improve the generalization of the state-of-the-art AT methods. Philosophically, NoiLIn sheds light on a new perspective of learning with NLs: NLs should not always be deemed detrimental, and even in the absence of NLs in the training set, we may consider injecting them deliberately.

Cite

Text

Zhang et al. "NoiLin: Improving Adversarial Training and Correcting Stereotype of Noisy Labels ." Transactions on Machine Learning Research, 2022.

Markdown

[Zhang et al. "NoiLin: Improving Adversarial Training and Correcting Stereotype of Noisy Labels ." Transactions on Machine Learning Research, 2022.](https://mlanthology.org/tmlr/2022/zhang2022tmlr-noilin/)

BibTeX

@article{zhang2022tmlr-noilin,
  title     = {{NoiLin: Improving Adversarial Training and Correcting Stereotype of Noisy Labels }},
  author    = {Zhang, Jingfeng and Xu, Xilie and Han, Bo and Liu, Tongliang and Cui, Lizhen and Niu, Gang and Sugiyama, Masashi},
  journal   = {Transactions on Machine Learning Research},
  year      = {2022},
  url       = {https://mlanthology.org/tmlr/2022/zhang2022tmlr-noilin/}
}