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图自动编码器对抗训练中的鲁棒性与准确性

Robustness meets accuracy in adversarial training for graph autoencoder.

作者信息

Zhou Xianchen, Hu Kun, Wang Hongxia

机构信息

College of Liberal Arts and Sciences, National University of Defense Technology, Changsha, 410072, Hunan, China.

College of Computer Science and Technology, National University of Defense Technology, Changsha, 410072, Hunan, China.

出版信息

Neural Netw. 2023 Jan;157:114-124. doi: 10.1016/j.neunet.2022.10.010. Epub 2022 Oct 20.

Abstract

Graph autoencoder (GAE) is an effective deep method for graph embedding, while it is vulnerable to the graph adversarial attacks. Adversarial training, which generates adversarial examples in the adversarial scope(neighborhood of natural examples), is effective to improve the robustness of GAE. However, it may lead to degradation of natural accuracy (accuracy on natural examples) due to the extra training examples generated in the adversarial scope (the reasonable scope of adversarial examples). Therefore, considering robustness and natural accuracy is crucial to GAE. In this paper, an improved GAE model is formulated by combining the Structure and Feature encoders, and a novel Adversarial Training strategy (GAE-SFAT) is proposed based on improved GAE. GAE-SFAT has a smaller but more reasonable adversarial scope for adversarial training, which keeps the robustness and reduces the degradation of natural accuracy compared with ordinary adversarial training. In addition, a novel algorithm considering the robustness and accuracy is designed to optimize the GAE-SFAT. We conduct experiments both on the natural graphs as well as perturbed graphs for three datasets. The results show that GAE-SFAT can perform better than state of arts adversarial training model under different kinds of perturbations.

摘要

图自动编码器(GAE)是一种有效的图嵌入深度方法,但它容易受到图对抗攻击。对抗训练在对抗范围(自然样本的邻域)内生成对抗样本,对提高GAE的鲁棒性是有效的。然而,由于在对抗范围(对抗样本的合理范围)内生成了额外的训练样本,它可能会导致自然准确率(自然样本上的准确率)下降。因此,兼顾鲁棒性和自然准确率对GAE至关重要。本文通过结合结构编码器和特征编码器构建了一个改进的GAE模型,并基于改进的GAE提出了一种新颖的对抗训练策略(GAE-SFAT)。GAE-SFAT在对抗训练中有一个更小但更合理的对抗范围,与普通对抗训练相比,它在保持鲁棒性的同时减少了自然准确率的下降。此外,还设计了一种兼顾鲁棒性和准确率的新颖算法来优化GAE-SFAT。我们在三个数据集的自然图和扰动图上都进行了实验。结果表明,在不同类型的扰动下,GAE-SFAT的性能优于现有对抗训练模型。

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