用具有解释意识的后门伪装攻击

Maximilian Noppel, Lukas Peter, Christian Wressnegger
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引用次数: 6

摘要

可解释的机器学习在分析和理解基于学习的系统方面具有巨大的潜力。然而,这些方法可能被操纵来提供不忠实的解释,从而产生强大而隐蔽的对手。在本文中,我们演示了如何完全掩盖机器学习模型的对抗操作。与神经后门类似,我们在触发存在时改变模型的预测,但同时欺骗一种事后分析的解释方法。这使得对手能够隐藏触发器的存在,或者将解释指向输入的完全不同的部分,从而转移注意力。我们分析了这些基于梯度和传播的解释方法的解释感知后门在图像域的不同表现,然后我们继续对恶意软件分类进行红鲱鱼攻击。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Disguising Attacks with Explanation-Aware Backdoors
Explainable machine learning holds great potential for analyzing and understanding learning-based systems. These methods can, however, be manipulated to present unfaithful explanations, giving rise to powerful and stealthy adversaries. In this paper, we demonstrate how to fully disguise the adversarial operation of a machine learning model. Similar to neural backdoors, we change the model’s prediction upon trigger presence but simultaneously fool an explanation method that is applied post-hoc for analysis. This enables an adversary to hide the presence of the trigger or point the explanation to entirely different portions of the input, throwing a red herring. We analyze different manifestations of these explanation-aware backdoors for gradient- and propagation-based explanation methods in the image domain, before we resume to conduct a red-herring attack against malware classification.
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