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SmoothMix: Training Confidence-calibrated Smoothed Classifiers for Certified Robustness
- Jeong, Jongheon;
- Park, Sejun;
- Kim, Minkyu;
- Lee, Heung-Chang;
- Kim, Doguk;
- 외 1명
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40초록
Randomized smoothing is currently a state-of-the-art method to construct a certifiably robust classifier from neural networks against l(2)-adversarial perturbations. Under the paradigm, the robustness of a classifier is aligned with the prediction confidence, i.e., the higher confidence from a smoothed classifier implies the better robustness. This motivates us to rethink the fundamental trade-off between accuracy and robustness in terms of calibrating confidences of a smoothed classifier. In this paper, we propose a simple training scheme, coined SmoothMix, to control the robustness of smoothed classifiers via self-mixup: it trains on convex combinations of samples along the direction of adversarial perturbation for each input. The proposed procedure effectively identifies over-confident, near off-class samples as a cause of limited robustness in case of smoothed classifiers, and offers an intuitive way to adaptively set a new decision boundary between these samples for better robustness. Our experimental results demonstrate that the proposed method can significantly improve the certified l(2)-robustness of smoothed classifiers compared to existing state-of-the-art robust training methods.(3)
- 제목
- SmoothMix: Training Confidence-calibrated Smoothed Classifiers for Certified Robustness
- 저자
- Jeong, Jongheon; Park, Sejun; Kim, Minkyu; Lee, Heung-Chang; Kim, Doguk; Shin, Jinwoo
- 발행일
- 2021
- 유형
- Proceedings Paper
- 저널명
- ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 34 (NEURIPS 2021)