论文标题

对对抗训练的分类精度的精确统计分析

Precise Statistical Analysis of Classification Accuracies for Adversarial Training

论文作者

Javanmard, Adel, Soltanolkotabi, Mahdi

论文摘要

尽管现代机器学习算法和模型在多种应用中取得了广泛的经验成功,但已知它们非常容易受到看似很小的不可见力的对输入数据的扰动,称为\ emph {versversarial Attacks}。已经提出了各种最近的对抗训练程序来解决这个问题。尽管此类程序在对抗扰动的输入或\ emph {可靠的准确性}方面取得了成功,但这些技术通常会降低自然不受干扰的输入或\ emph {标准准确性}的精度。进一步复杂的事情,对抗性训练程序对标准和可靠准确性的效果和趋势是相反的直觉和根本上取决于各种因素,包括在培训期间扰动的感知形式一类最小训练的模型的标准和鲁棒精度的表征。我们考虑了一个基于常规的对抗模型,在该模型中,对手可以为每个输入数据添加有限的$ \ ell_p $ narm的扰动,以构成任意的$ p \ ge 1 $。我们的综合分析使我们从理论上解释了几种有趣的经验现象,并提供了对不同问题参数在标准和鲁棒精度上的作用的精确理解。

Despite the wide empirical success of modern machine learning algorithms and models in a multitude of applications, they are known to be highly susceptible to seemingly small indiscernible perturbations to the input data known as \emph{adversarial attacks}. A variety of recent adversarial training procedures have been proposed to remedy this issue. Despite the success of such procedures at increasing accuracy on adversarially perturbed inputs or \emph{robust accuracy}, these techniques often reduce accuracy on natural unperturbed inputs or \emph{standard accuracy}. Complicating matters further, the effect and trend of adversarial training procedures on standard and robust accuracy is rather counter intuitive and radically dependent on a variety of factors including the perceived form of the perturbation during training, size/quality of data, model overparameterization, etc. In this paper we focus on binary classification problems where the data is generated according to the mixture of two Gaussians with general anisotropic covariance matrices and derive a precise characterization of the standard and robust accuracy for a class of minimax adversarially trained models. We consider a general norm-based adversarial model, where the adversary can add perturbations of bounded $\ell_p$ norm to each input data, for an arbitrary $p\ge 1$. Our comprehensive analysis allows us to theoretically explain several intriguing empirical phenomena and provide a precise understanding of the role of different problem parameters on standard and robust accuracies.

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