Long-Term Cross Adversarial Training: A Robust Meta-Learning Method for Few-Shot Classification Tasks

Abstract

Meta-learning model can quickly adapt to new tasks using few-shot labeled data. However, despite achieving good generalization on few-shot classification tasks, it is still challenging to improve the adversarial robustness of the meta-learning model in few-shot learning. Although adversarial training (AT) methods such as Adversarial Query (AQ) can improve the adversarially robust performance of meta-learning models, AT is still computationally expensive training. On the other hand, meta-learning models trained with AT will drop significant accuracy on the original clean images. This paper proposed a meta-learning method on the adversarially robust neural network called Long-term Cross Adversarial Training (LCAT). LCAT will update meta-learning model parameters cross along the natural and adversarial sample distribution direction with long-term to improve both adversarial and clean few-shot classification accuracy. Due to cross-adversarial training, LCAT only needs half of the adversarial training epoch than AQ, resulting in a low adversarial training computation. Experiment results show that LCAT achieves superior performance both on the clean and adversarial few-shot classification accuracy than SOTA adversarial training methods for meta-learning models.

Cite

Text

Liu et al. "Long-Term Cross Adversarial Training: A Robust Meta-Learning Method for Few-Shot Classification Tasks ." ICML 2021 Workshops: AML, 2021.

Markdown

[Liu et al. "Long-Term Cross Adversarial Training: A Robust Meta-Learning Method for Few-Shot Classification Tasks ." ICML 2021 Workshops: AML, 2021.](https://mlanthology.org/icmlw/2021/liu2021icmlw-longterm/)

BibTeX

@inproceedings{liu2021icmlw-longterm,
  title     = {{Long-Term Cross Adversarial Training: A Robust Meta-Learning Method for Few-Shot Classification Tasks }},
  author    = {Liu, Fan and Zhao, Shuyu and Dai, Xuelong and Xiao, Bin},
  booktitle = {ICML 2021 Workshops: AML},
  year      = {2021},
  url       = {https://mlanthology.org/icmlw/2021/liu2021icmlw-longterm/}
}