Adversarial Attacks on Deep Graph Matching
–Neural Information Processing Systems
Despite achieving remarkable performance, deep graph learning models, such as node classification and network embedding, suffer from harassment caused by small adversarial perturbations.
Neural Information Processing Systems
Aug-17-2025, 05:06:10 GMT
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