A Closer Look at Evaluating the Bit-Flip Attack Against Deep Neural Networks

Kevin Hector, Mathieu Dumont, Pierre-Alain Moëllic, J. Dutertre
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引用次数: 3

Abstract

Deep neural network models are massively deployed on a wide variety of hardware platforms. This results in the appearance of new attack vectors that significantly extend the standard attack surface, extensively studied by the adversarial machine learning community. One of the first attack that aims at drastically dropping the performance of a model by targeting its parameters stored in memory, is the Bit-Flip Attack (BFA). In this work, we point out several evaluation challenges related to the BFA. First, the lack of an adversary’s budget in the standard threat model is problematic, especially when dealing with physical attacks. Moreover, since the BFA presents critical variability, we discuss the influence of some training parameters and the importance of the model architecture. This work is the first to present the impact of the BFA against fully-connected architectures that present different behaviors compared to convolutional neural networks. These results highlight the importance of defining robust and sound evaluation methodologies to properly evaluate the dangers of parameter-based attacks as well as measure the real level of robustness offered by a defense.
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深入研究对深度神经网络的比特翻转攻击
深度神经网络模型被大量部署在各种各样的硬件平台上。这导致了新的攻击向量的出现,大大扩展了标准攻击面,被对抗性机器学习社区广泛研究。比特翻转攻击(bitcoin - flip attack, BFA)是一种旨在通过攻击存储在内存中的参数来大幅降低模型性能的攻击。在这项工作中,我们指出了与BFA相关的几个评估挑战。首先,在标准威胁模型中缺乏对手的预算是有问题的,特别是在处理物理攻击时。此外,由于BFA具有临界变异性,我们讨论了一些训练参数的影响以及模型体系结构的重要性。这项工作首次展示了BFA对与卷积神经网络相比表现出不同行为的全连接架构的影响。这些结果强调了定义健壮和可靠的评估方法的重要性,以便正确评估基于参数的攻击的危险,以及度量防御提供的健壮性的实际水平。
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