对抗式机器学习中出现的非局部周边的伽马收敛性

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2024-04-26 DOI:10.1007/s00526-024-02721-9
Leon Bungert, Kerrek Stinson
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引用次数: 0

摘要

在本文中,我们证明了闵科夫斯基类型的非局部周长与局部各向异性周长的伽马收敛性。非局部模型描述了二元分类中对抗训练的正则效应。能量主要取决于两个模拟相关类别可能性的分布之间的相互作用。我们克服了通常对分布的严格正则性假设,只假设它们具有有界的 BV 密度。在紧凑性带来的自然拓扑中,我们证明了加权周长的伽马收敛性,其权重由两个密度的各向异性函数决定。尽管是局部的,但这一尖锐的界面极限反映了对抗性扰动的分类稳定性。我们进一步应用我们的结果来推导相关总变化的伽马收敛性,研究对抗训练的渐近性,并证明非局部周长的图离散的伽马收敛性。
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Gamma-convergence of a nonlocal perimeter arising in adversarial machine learning

In this paper we prove Gamma-convergence of a nonlocal perimeter of Minkowski type to a local anisotropic perimeter. The nonlocal model describes the regularizing effect of adversarial training in binary classifications. The energy essentially depends on the interaction between two distributions modelling likelihoods for the associated classes. We overcome typical strict regularity assumptions for the distributions by only assuming that they have bounded BV densities. In the natural topology coming from compactness, we prove Gamma-convergence to a weighted perimeter with weight determined by an anisotropic function of the two densities. Despite being local, this sharp interface limit reflects classification stability with respect to adversarial perturbations. We further apply our results to deduce Gamma-convergence of the associated total variations, to study the asymptotics of adversarial training, and to prove Gamma-convergence of graph discretizations for the nonlocal perimeter.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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