Evasion and causative attacks with adversarial deep learning

Yi Shi, Y. Sagduyu
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引用次数: 36

Abstract

This paper presents a novel approach to launch and defend against the causative and evasion attacks on machine learning classifiers. As the preliminary step, the adversary starts with an exploratory attack based on deep learning (DL) and builds a functionally equivalent classifier by polling the online target classifier with input data and observing the returned labels. Using this inferred classifier, the adversary can select samples according to their DL scores and feed them to the original classifier. In an evasion attack, the adversary feeds the target classifier with test data after selecting samples with DL scores that are close to the decision boundary to increase the chance that these samples are misclassified. In a causative attack, the adversary feeds the target classifier with training data after changing the labels of samples with DL scores that are far away from the decision boundary to reduce the reliability of the training process. Results obtained for text and image classification show that the proposed evasion and causative attacks can significantly increase the error during test and training phases, respectively. A defense strategy is presented to change a small number of labels of the original classifier to prevent its reliable inference by the adversary and its effective use in evasion and causative attacks. These findings identify new vulnerabilities of machine learning and demonstrate that a proactive defense mechanism can reduce the impact of the underlying attacks.
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对抗性深度学习的规避和因果攻击
本文提出了一种针对机器学习分类器发起和防御原因攻击和逃避攻击的新方法。作为初步步骤,攻击者首先基于深度学习(DL)进行探索性攻击,并通过使用输入数据轮询在线目标分类器并观察返回的标签来构建功能等效的分类器。使用这个推断分类器,对手可以根据他们的DL分数选择样本,并将它们提供给原始分类器。在逃避攻击中,攻击者在选择DL分数接近决策边界的样本后,向目标分类器提供测试数据,以增加这些样本被错误分类的机会。在因果攻击中,攻击者在改变DL分数远离决策边界的样本标签后,向目标分类器提供训练数据,以降低训练过程的可靠性。在文本和图像分类中得到的结果表明,所提出的逃避攻击和因果攻击分别在测试和训练阶段显著增加了错误。提出了一种改变原始分类器的少量标签的防御策略,以防止对手对其进行可靠的推断,并有效地利用其进行逃避和因果攻击。这些发现确定了机器学习的新漏洞,并证明了主动防御机制可以减少潜在攻击的影响。
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