Once-for-All Adversarial Training: In-Situ Tradeoff between Robustness and Accuracy for Free

October 22, 2020 ยท Entered Twilight ยท ๐Ÿ› Neural Information Processing Systems

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Repo contents: .gitignore, Framework.PNG, LICENSE, OAT.py, PGDAT.py, README.md, attacks, dataloaders, models, utils

Authors Haotao Wang, Tianlong Chen, Shupeng Gui, Ting-Kuei Hu, Ji Liu, Zhangyang Wang arXiv ID 2010.11828 Category cs.CV: Computer Vision Cross-listed cs.LG Citations 89 Venue Neural Information Processing Systems Repository https://github.com/VITA-Group/Once-for-All-Adversarial-Training โญ 44 Last Checked 1 month ago
Abstract
Adversarial training and its many variants substantially improve deep network robustness, yet at the cost of compromising standard accuracy. Moreover, the training process is heavy and hence it becomes impractical to thoroughly explore the trade-off between accuracy and robustness. This paper asks this new question: how to quickly calibrate a trained model in-situ, to examine the achievable trade-offs between its standard and robust accuracies, without (re-)training it many times? Our proposed framework, Once-for-all Adversarial Training (OAT), is built on an innovative model-conditional training framework, with a controlling hyper-parameter as the input. The trained model could be adjusted among different standard and robust accuracies "for free" at testing time. As an important knob, we exploit dual batch normalization to separate standard and adversarial feature statistics, so that they can be learned in one model without degrading performance. We further extend OAT to a Once-for-all Adversarial Training and Slimming (OATS) framework, that allows for the joint trade-off among accuracy, robustness and runtime efficiency. Experiments show that, without any re-training nor ensembling, OAT/OATS achieve similar or even superior performance compared to dedicatedly trained models at various configurations. Our codes and pretrained models are available at: https://github.com/VITA-Group/Once-for-All-Adversarial-Training.
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