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Dec, 2022
平滑分类器的置信度训练与可证明的鲁棒性
Confidence-aware Training of Smoothed Classifiers for Certified Robustness
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Jongheon Jeong, Seojin Kim, Jinwoo Shin
TL;DR
本文提出了一个基于高斯噪声控制样本鲁棒性的训练方法,通过高斯噪声的代理指标筛选出不太可能从最坏情况的训练目标中受益的样本,从而获得稳健的分类器,并在实验中证明是有效的。
Abstract
Any
classifier
can be "smoothed out" under
gaussian noise
to build a new
classifier
that is provably robust to $\ell_2$-adversarial pertur
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