𝓁0攻击下高斯混合模型的鲁棒分类

IF 1.9 Q1 MATHEMATICS, APPLIED SIAM journal on mathematics of data science Pub Date : 2021-04-05 DOI:10.1137/21m1426286
Payam Delgosha, Hamed Hassani, Ramtin Pedarsani
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引用次数: 5

摘要

众所周知,机器学习模型很容易受到小而巧妙设计的对抗性扰动的影响,这些扰动可能导致错误分类。虽然在设计各种对抗环境的攻击和防御方面取得了重大进展,但许多基本和理论问题尚未得到解决。在本文中,我们考虑在存在的分类 $\ell_0$-有界对抗性扰动,又名稀疏攻击。这种设置与其他设置明显不同 $\ell_p$-对抗性设置,与 $p\geq 1$,作为… $\ell_0$-球是非凸的,高度不光滑。在假设数据按照高斯混合模型分布的情况下,我们的目标是表征最优鲁棒分类器和相应的鲁棒分类误差,以及鲁棒性、准确性和对手预算之间的各种权衡。为此,我们开发了一种新的分类算法FilTrun,它有两个主要模块:过滤和截断。我们的方法的关键思想是首先过滤掉输入的非鲁棒坐标,然后应用精心设计的截断内积进行分类。通过分析FilTrun算法的性能,给出了最优鲁棒分类误差的上界。我们还通过设计一个特定的对抗策略来找到一个下界,该策略使我们能够推导出相应的鲁棒分类器及其实现的误差。对于高斯混合的协方差矩阵为对角线的情况,我们证明了随着输入维数的增大,上下界收敛;即我们描述渐近最优鲁棒分类器。在整个过程中,我们讨论了几个例子,说明有趣的行为,如存在的相位转变的对手的预算决定是否对抗性扰动的影响可以完全抵消。
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Robust Classification Under 𝓁0 Attack for the Gaussian Mixture Model
It is well-known that machine learning models are vulnerable to small but cleverly-designed adversarial perturbations that can cause misclassification. While there has been major progress in designing attacks and defenses for various adversarial settings, many fundamental and theoretical problems are yet to be resolved. In this paper, we consider classification in the presence of $\ell_0$-bounded adversarial perturbations, a.k.a. sparse attacks. This setting is significantly different from other $\ell_p$-adversarial settings, with $p\geq 1$, as the $\ell_0$-ball is non-convex and highly non-smooth. Under the assumption that data is distributed according to the Gaussian mixture model, our goal is to characterize the optimal robust classifier and the corresponding robust classification error as well as a variety of trade-offs between robustness, accuracy, and the adversary's budget. To this end, we develop a novel classification algorithm called FilTrun that has two main modules: Filtration and Truncation. The key idea of our method is to first filter out the non-robust coordinates of the input and then apply a carefully-designed truncated inner product for classification. By analyzing the performance of FilTrun, we derive an upper bound on the optimal robust classification error. We also find a lower bound by designing a specific adversarial strategy that enables us to derive the corresponding robust classifier and its achieved error. For the case that the covariance matrix of the Gaussian mixtures is diagonal, we show that as the input's dimension gets large, the upper and lower bounds converge; i.e. we characterize the asymptotically-optimal robust classifier. Throughout, we discuss several examples that illustrate interesting behaviors such as the existence of a phase transition for adversary's budget determining whether the effect of adversarial perturbation can be fully neutralized.
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