基于可解释性的后门攻击图神经网络

Jing Xu, Minhui Xue, S. Picek
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引用次数: 45

摘要

后门攻击对神经网络模型构成严重威胁。后门模型会将嵌入触发器的输入错误地分类为攻击者选择的目标标签,而在其他良性输入上正常执行。关于神经网络的后门攻击已经有很多研究,但只有少数研究考虑了图神经网络(gnn)。因此,在解释触发注入位置对gnn后门攻击性能的影响方面,目前还没有深入的研究。为了弥补这一差距,我们对gnn后门攻击的性能进行了实验研究。我们采用两种强大的GNN可解释性方法来选择最佳触发注入位置,以实现攻击者的两个目标-高攻击成功率和低清洁精度下降。我们在基准数据集和最先进的神经网络模型上的实证结果表明,所提出的方法在为gnn后门攻击选择触发注入位置方面是有效的。例如,在节点分类任务上,GraphLIME选择的具有触发注入位置的后门攻击,攻击成功率达到84%以上,准确率下降幅度小于2.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Explainability-based Backdoor Attacks Against Graph Neural Networks
Backdoor attacks represent a serious threat to neural network models. A backdoored model will misclassify the trigger-embedded inputs into an attacker-chosen target label while performing normally on other benign inputs. There are already numerous works on backdoor attacks on neural networks, but only a few works consider graph neural networks (GNNs). As such, there is no intensive research on explaining the impact of trigger injecting position on the performance of backdoor attacks on GNNs. To bridge this gap, we conduct an experimental investigation on the performance of backdoor attacks on GNNs. We apply two powerful GNN explainability approaches to select the optimal trigger injecting position to achieve two attacker objectives - high attack success rate and low clean accuracy drop. Our empirical results on benchmark datasets and state-of-the-art neural network models demonstrate the proposed method's effectiveness in selecting trigger injecting position for backdoor attacks on GNNs. For instance, on the node classification task, the backdoor attack with trigger injecting position selected by GraphLIME reaches over 84% attack success rate with less than 2.5% accuracy drop.
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