Mitigating Memorization of Noisy Labels by Clipping the Model Prediction

Abstract

In the presence of noisy labels, designing robust loss functions is critical for securing the generalization performance of deep neural networks. Cross Entropy (CE) loss has been shown to be not robust to noisy labels due to its unboundedness. To alleviate this issue, existing works typically design specialized robust losses with the symmetric condition, which usually lead to the underfitting issue. In this paper, our key idea is to induce a loss bound at the logit level, thus universally enhancing the noise robustness of existing losses. Specifically, we propose logit clipping (LogitClip), which clamps the norm of the logit vector to ensure that it is upper bounded by a constant. In this manner, CE loss equipped with our LogitClip method is effectively bounded, mitigating the overfitting to examples with noisy labels. Moreover, we present theoretical analyses to certify the noise-tolerant ability of LogitClip. Extensive experiments show that LogitClip not only significantly improves the noise robustness of CE loss, but also broadly enhances the generalization performance of popular robust losses.

Cite

Text

Wei et al. "Mitigating Memorization of Noisy Labels by Clipping the Model Prediction." International Conference on Machine Learning, 2023.

Markdown

[Wei et al. "Mitigating Memorization of Noisy Labels by Clipping the Model Prediction." International Conference on Machine Learning, 2023.](https://mlanthology.org/icml/2023/wei2023icml-mitigating/)

BibTeX

@inproceedings{wei2023icml-mitigating,
  title     = {{Mitigating Memorization of Noisy Labels by Clipping the Model Prediction}},
  author    = {Wei, Hongxin and Zhuang, Huiping and Xie, Renchunzi and Feng, Lei and Niu, Gang and An, Bo and Li, Yixuan},
  booktitle = {International Conference on Machine Learning},
  year      = {2023},
  pages     = {36868-36886},
  volume    = {202},
  url       = {https://mlanthology.org/icml/2023/wei2023icml-mitigating/}
}