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Main Authors: Yuan, Kai, Zhang, Jiahao, Wang, Yidi, Pei, Xiaobing
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2412.07468
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author Yuan, Kai
Zhang, Jiahao
Wang, Yidi
Pei, Xiaobing
author_facet Yuan, Kai
Zhang, Jiahao
Wang, Yidi
Pei, Xiaobing
contents Adversarial attacks on Graph Neural Networks aim to perturb the performance of the learner by carefully modifying the graph topology and node attributes. Existing methods achieve attack stealthiness by constraining the modification budget and differences in graph properties. However, these methods typically disrupt task-relevant primary semantics directly, which results in low defensibility and detectability of the attack. In this paper, we propose an Adversarial Attack on High-level Semantics for Graph Neural Networks (AHSG), which is a graph structure attack model that ensures the retention of primary semantics. By combining latent representations with shared primary semantics, our model retains detectable attributes and relational patterns of the original graph while leveraging more subtle changes to carry out the attack. Then we use the Projected Gradient Descent algorithm to map the latent representations with attack effects to the adversarial graph. Through experiments on robust graph deep learning models equipped with defense strategies, we demonstrate that AHSG outperforms other state-of-the-art methods in attack effectiveness. Additionally, using Contextual Stochastic Block Models to detect the attacked graph further validates that our method preserves the primary semantics of the graph.
format Preprint
id arxiv_https___arxiv_org_abs_2412_07468
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle AHSG: Adversarial Attack on High-level Semantics in Graph Neural Networks
Yuan, Kai
Zhang, Jiahao
Wang, Yidi
Pei, Xiaobing
Machine Learning
Adversarial attacks on Graph Neural Networks aim to perturb the performance of the learner by carefully modifying the graph topology and node attributes. Existing methods achieve attack stealthiness by constraining the modification budget and differences in graph properties. However, these methods typically disrupt task-relevant primary semantics directly, which results in low defensibility and detectability of the attack. In this paper, we propose an Adversarial Attack on High-level Semantics for Graph Neural Networks (AHSG), which is a graph structure attack model that ensures the retention of primary semantics. By combining latent representations with shared primary semantics, our model retains detectable attributes and relational patterns of the original graph while leveraging more subtle changes to carry out the attack. Then we use the Projected Gradient Descent algorithm to map the latent representations with attack effects to the adversarial graph. Through experiments on robust graph deep learning models equipped with defense strategies, we demonstrate that AHSG outperforms other state-of-the-art methods in attack effectiveness. Additionally, using Contextual Stochastic Block Models to detect the attacked graph further validates that our method preserves the primary semantics of the graph.
title AHSG: Adversarial Attack on High-level Semantics in Graph Neural Networks
topic Machine Learning
url https://arxiv.org/abs/2412.07468