针对对抗性补丁攻击的鲁棒判别投影学习。

IF 10.2 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Zheng Wang, Feiping Nie, Hua Wang, Heng Huang, Fei Wang
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引用次数: 0

摘要

线性判别分析(LDA)作为最流行的监督降维方法之一,在机器学习界得到了广泛的研究,并在许多科学应用中得到了应用。传统的LDA最小化了l2规范的平方比,这很容易受到对抗性例子的影响。在最近的研究中,提出了许多基于l1范数的鲁棒降维方法来提高模型的鲁棒性。然而,由于l1-范数比率优化的困难以及在防御大量对抗性实例方面的弱点,到目前为止,很少有工作能够利用稀疏诱导范数来实现LDA目标。在本文中,我们提出了一种新的基于l1,2-范数迹比最小化优化算法的鲁棒判别投影学习(rDPL)方法。直接最小化l1,2-范数比问题是一个比传统方法更具挑战性的问题,并且现有的优化算法无法解决这种非光滑项比问题。我们推导了一种新的有效算法来解决这个具有挑战性的问题,并对算法的收敛性进行了理论分析。该算法易于实现,在实际应用中收敛速度快。在合成数据和几个真实基准数据集上进行的大量实验表明,与许多最先进的鲁棒降维方法相比,所提出的方法在防御对抗性补丁攻击方面是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Toward Robust Discriminative Projections Learning Against Adversarial Patch Attacks.

As one of the most popular supervised dimensionality reduction methods, linear discriminant analysis (LDA) has been widely studied in machine learning community and applied to many scientific applications. Traditional LDA minimizes the ratio of squared l2 norms, which is vulnerable to the adversarial examples. In recent studies, many l1 -norm-based robust dimensionality reduction methods are proposed to improve the robustness of model. However, due to the difficulty of l1 -norm ratio optimization and weakness on defending a large number of adversarial examples, so far, scarce works have been proposed to utilize sparsity-inducing norms for LDA objective. In this article, we propose a novel robust discriminative projections learning (rDPL) method based on the l1,2 -norm trace-ratio minimization optimization algorithm. Minimizing the l1,2 -norm ratio problem directly is a much more challenging problem than the traditional methods, and there is no existing optimization algorithm to solve such nonsmooth terms ratio problem. We derive a new efficient algorithm to solve this challenging problem and provide a theoretical analysis on the convergence of our algorithm. The proposed algorithm is easy to implement and converges fast in practice. Extensive experiments on both synthetic data and several real benchmark datasets show the effectiveness of the proposed method on defending the adversarial patch attack by comparison with many state-of-the-art robust dimensionality reduction methods.

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来源期刊
IEEE transactions on neural networks and learning systems
IEEE transactions on neural networks and learning systems COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
CiteScore
23.80
自引率
9.60%
发文量
2102
审稿时长
3-8 weeks
期刊介绍: The focus of IEEE Transactions on Neural Networks and Learning Systems is to present scholarly articles discussing the theory, design, and applications of neural networks as well as other learning systems. The journal primarily highlights technical and scientific research in this domain.
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