2023
DOI: 10.1007/978-3-031-26409-2_16
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Resisting Graph Adversarial Attack via Cooperative Homophilous Augmentation

Abstract: As the study of graph neural networks becomes more intensive and comprehensive, their robustness and security have received great research interest. The existing global attack methods treat all nodes in the graph as their attack targets. Although existing methods have achieved excellent results, there is still considerable space for improvement. The key problem is that the current approaches rigidly follow the definition of global attacks. They ignore an important issue, i.e., different nodes have different ro… Show more

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