MLCRLGSep 13, 2017

EAD: Elastic-Net Attacks to Deep Neural Networks via Adversarial Examples

arXiv:1709.04114v3682 citations
Originality Incremental advance
AI Analysis

This work addresses security vulnerabilities in deep neural networks for machine learning practitioners, offering incremental improvements in attack transferability and adversarial training.

The paper tackles the problem of crafting adversarial examples for deep neural networks by proposing an elastic-net regularized optimization method (EAD) that generates L1-oriented perturbations, achieving similar attack performance to state-of-the-art methods with small L1 distortion on datasets like MNIST, CIFAR10, and ImageNet.

Recent studies have highlighted the vulnerability of deep neural networks (DNNs) to adversarial examples - a visually indistinguishable adversarial image can easily be crafted to cause a well-trained model to misclassify. Existing methods for crafting adversarial examples are based on $L_2$ and $L_\infty$ distortion metrics. However, despite the fact that $L_1$ distortion accounts for the total variation and encourages sparsity in the perturbation, little has been developed for crafting $L_1$-based adversarial examples. In this paper, we formulate the process of attacking DNNs via adversarial examples as an elastic-net regularized optimization problem. Our elastic-net attacks to DNNs (EAD) feature $L_1$-oriented adversarial examples and include the state-of-the-art $L_2$ attack as a special case. Experimental results on MNIST, CIFAR10 and ImageNet show that EAD can yield a distinct set of adversarial examples with small $L_1$ distortion and attains similar attack performance to the state-of-the-art methods in different attack scenarios. More importantly, EAD leads to improved attack transferability and complements adversarial training for DNNs, suggesting novel insights on leveraging $L_1$ distortion in adversarial machine learning and security implications of DNNs.

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