Code for CVPR 2022 Paper 'Enhancing Adversarial Training with Second-Order Statistics of Weights'
https://arxiv.org/abs/2203.06020
Python 3.6+
Pytorch 1.8.1+cu111
AT+S2O for CIFAR10, ResNet18: run ./CIFAR10_AT_S2O/train_S2O.py
We got the best performance between epoch 100-110
clean: 83.65 PGD-20: 55.11 AA: 48.3
TRADES+AWP+S2O for CIFAR10, WRN34-10: run ./CIFAR10_AWP_S2O/train_S2O.py
We got the best performance between epoch 100-200
clean: 86.01 PGD-20: 61.12 AA: 55.9
MART+S2O for CIFAR10, WRN34-10: run ./CIFAR10_MART_S2O/train_S2O.py
We got the best performance between epoch 100-200
clean: 83.91 PGD-20: 59.29 AA: 54.1
TRADES+S2O for CIFAR10, WRN34-10: run ./CIFAR10_TRADES_S2O/train_S2O.py
We got the best performance between epoch 100-110
clean: 85.67 PGD-20: 58.34 AA: 54.1
For TRADES+AWP+S2O on CIFAR100, please modify CIFAR10_AWP_S2O/train_S2O.py lines 207, 221: 0.8 -> 0.98; lines 209, 223: 0.2 -> 0.02
Following TRADES, we set epsilon=0.031, step_size=0.003 for PGD and CW evaluation. Auto attack evaluation is under standard version.
@article{jin2022enhancing,
title={Enhancing Adversarial Training with Second-Order Statistics of Weights},
author={Gaojie Jin and Xinping Yi and Wei Huang and Sven Schewe and Xiaowei Huang},
journal={CVPR},
year={2022}.
}
[1] AT: https://github.com/locuslab/robust_overfitting
[2] TRADES: https://github.com/yaodongyu/TRADES/
[3] AutoAttack: https://github.com/fra31/auto-attack
[4] MART: https://github.com/YisenWang/MART
[5] AWP: https://github.com/csdongxian/AWP
[6] AVMixup: https://github.com/hirokiadachi/Adversarial-vertex-mixup-pytorch