利用合作同调增强抵抗图对抗攻击

Zhihao Zhu, Chenwang Wu, Mingyang Zhou, Hao Liao, DefuLian, Enhong Chen
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引用次数: 2

摘要

最近的研究表明,图神经网络(gnn)是脆弱的,很容易被小的扰动所愚弄,这引起了人们对在各种安全关键应用中调整gnn的相当大的关注。在这项工作中,我们专注于新兴但关键的攻击,即图注入攻击(GIA),其中攻击者通过注入假节点而不是修改现有结构或节点属性来毒害图。研究发现,对抗性攻击与摄动图上的异质性增加有关(攻击者倾向于连接不同的节点),我们通过对图数据和模型的合作同质增强,提出了一种针对GIA的通用防御框架CHAGNN。具体而言,该模型在每轮训练中为未标记的节点生成伪标签,以减少具有不同标签的节点的异缘。更清晰的图被反馈给模型,产生更多信息的伪标签。在这样的迭代方式下,模型鲁棒性得到了很好的增强。本文从理论上分析了同调增的效应,并为该建议的有效性提供了保证。在不同的真实数据集上,实验结果实证地证明了CHAGNN与最近最先进的防御方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Resisting Graph Adversarial Attack via Cooperative Homophilous Augmentation
Recent studies show that Graph Neural Networks(GNNs) are vulnerable and easily fooled by small perturbations, which has raised considerable concerns for adapting GNNs in various safety-critical applications. In this work, we focus on the emerging but critical attack, namely, Graph Injection Attack(GIA), in which the adversary poisons the graph by injecting fake nodes instead of modifying existing structures or node attributes. Inspired by findings that the adversarial attacks are related to the increased heterophily on perturbed graphs (the adversary tends to connect dissimilar nodes), we propose a general defense framework CHAGNN against GIA through cooperative homophilous augmentation of graph data and model. Specifically, the model generates pseudo-labels for unlabeled nodes in each round of training to reduce heterophilous edges of nodes with distinct labels. The cleaner graph is fed back to the model, producing more informative pseudo-labels. In such an iterative manner, model robustness is then promisingly enhanced. We present the theoretical analysis of the effect of homophilous augmentation and provide the guarantee of the proposal's validity. Experimental results empirically demonstrate the effectiveness of CHAGNN in comparison with recent state-of-the-art defense methods on diverse real-world datasets.
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