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Auteurs principaux: Palumbo, Nils, Guo, Yang, Wu, Xi, Chen, Jiefeng, Liang, Yingyu, Jha, Somesh
Format: Preprint
Publié: 2023
Sujets:
Accès en ligne:https://arxiv.org/abs/2305.17528
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author Palumbo, Nils
Guo, Yang
Wu, Xi
Chen, Jiefeng
Liang, Yingyu
Jha, Somesh
author_facet Palumbo, Nils
Guo, Yang
Wu, Xi
Chen, Jiefeng
Liang, Yingyu
Jha, Somesh
contents Both transduction and rejection have emerged as important techniques for defending against adversarial perturbations. A recent work by Goldwasser et al. showed that rejection combined with transduction can give provable guarantees (for certain problems) that cannot be achieved otherwise. Nevertheless, under recent strong adversarial attacks, their work was shown to have low performance in a practical deep-learning setting. In this paper, we take a step towards realizing the promise of transduction+rejection in more realistic scenarios. Our key observation is that a novel application of a reduction technique by Tramèr, which was until now only used to demonstrate the vulnerability of certain defenses, can be used to actually construct effective defenses. Theoretically, we show that a careful application of this technique in the transductive setting can give significantly improved sample-complexity for robust generalization. Our theory guides us to design a new transductive algorithm for learning a selective model; extensive experiments using state of the art attacks show that our approach provides significantly better robust accuracy (81.6% on CIFAR-10 and 57.9% on CIFAR-100 under $l_\infty$ with budget 8/255) than existing techniques.
format Preprint
id arxiv_https___arxiv_org_abs_2305_17528
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Two Heads are Actually Better than One: Towards Better Adversarial Robustness via Transduction and Rejection
Palumbo, Nils
Guo, Yang
Wu, Xi
Chen, Jiefeng
Liang, Yingyu
Jha, Somesh
Machine Learning
Both transduction and rejection have emerged as important techniques for defending against adversarial perturbations. A recent work by Goldwasser et al. showed that rejection combined with transduction can give provable guarantees (for certain problems) that cannot be achieved otherwise. Nevertheless, under recent strong adversarial attacks, their work was shown to have low performance in a practical deep-learning setting. In this paper, we take a step towards realizing the promise of transduction+rejection in more realistic scenarios. Our key observation is that a novel application of a reduction technique by Tramèr, which was until now only used to demonstrate the vulnerability of certain defenses, can be used to actually construct effective defenses. Theoretically, we show that a careful application of this technique in the transductive setting can give significantly improved sample-complexity for robust generalization. Our theory guides us to design a new transductive algorithm for learning a selective model; extensive experiments using state of the art attacks show that our approach provides significantly better robust accuracy (81.6% on CIFAR-10 and 57.9% on CIFAR-100 under $l_\infty$ with budget 8/255) than existing techniques.
title Two Heads are Actually Better than One: Towards Better Adversarial Robustness via Transduction and Rejection
topic Machine Learning
url https://arxiv.org/abs/2305.17528