A mean curvature flow arising in adversarial training

IF 2.1 1区 数学 Q1 MATHEMATICS
Leon Bungert , Tim Laux , Kerrek Stinson
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引用次数: 0

Abstract

We connect adversarial training for binary classification to a geometric evolution equation for the decision boundary. Relying on a perspective that recasts adversarial training as a regularization problem, we introduce a modified training scheme that constitutes a minimizing movements scheme for a nonlocal perimeter functional. We prove that the scheme is monotone and consistent as the adversarial budget vanishes and the perimeter localizes, and as a consequence we rigorously show that the scheme approximates a weighted mean curvature flow. This highlights that the efficacy of adversarial training may be due to locally minimizing the length of the decision boundary. In our analysis, we introduce a variety of tools for working with the subdifferential of a supremal-type nonlocal total variation and its regularity properties.
对抗训练中出现的平均曲率流
我们将二元分类的对抗训练与决策边界的几何演化方程联系起来。基于将对抗训练重塑为正则化问题的视角,我们引入了一种改进的训练方案,它构成了非局部周界函数的最小化运动方案。我们证明,随着对抗预算的消失和周长的局部化,该方案是单调一致的,因此我们严格证明了该方案近似于加权平均曲率流。这凸显了对抗训练的功效可能是由于局部最小化了决策边界的长度。在我们的分析中,我们引入了多种工具,用于处理至上型非局部总变异的子差分及其正则特性。
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来源期刊
CiteScore
4.30
自引率
0.00%
发文量
84
审稿时长
6 months
期刊介绍: Published from 1836 by the leading French mathematicians, the Journal des Mathématiques Pures et Appliquées is the second oldest international mathematical journal in the world. It was founded by Joseph Liouville and published continuously by leading French Mathematicians - among the latest: Jean Leray, Jacques-Louis Lions, Paul Malliavin and presently Pierre-Louis Lions.
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