Publication | Open Access
Backdoor Attacks to Graph Neural Networks
194
Citations
41
References
2021
Year
Unknown Venue
EngineeringMachine LearningInformation SecurityNetwork AnalysisGraph ClassificationData ScienceAdversarial Machine LearningBackdoor AttackThreat DetectionComputer ScienceAttack GraphDeep LearningFirst Backdoor AttackData SecurityGraph TheoryAttack ModelBackdoor AttacksGraph AnalysisGraph Neural Network
In this work, we propose the first backdoor attack to graph neural networks (GNN). Specifically, we propose a subgraph based backdoor attack to GNN for graph classification. In our backdoor attack, a GNN classifier predicts an attacker-chosen target label for a testing graph once a predefined subgraph is injected to the testing graph. Our empirical results on three real-world graph datasets show that our backdoor attacks are effective with a small impact on a GNN's prediction accuracy for clean testing graphs. Moreover, we generalize a randomized smoothing based certified defense to defend against our backdoor attacks. Our empirical results show that the defense is effective in some cases but ineffective in other cases, highlighting the needs of new defenses for our backdoor attacks.
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