Publication | Open Access
Attacking Graph Convolutional Networks via Rewiring
62
Citations
27
References
2019
Year
Network FlowsNetwork ScienceGraph TheoryData ScienceMachine LearningNetwork EstimationGraph Convolutional NetworksGraph Neural NetworksEngineeringGraph Neural NetworkNetwork AnalysisGraph ClassificationAttack GraphComputer ScienceGraph AnalysisDeep LearningGenerated PerturbationGraph Processing
Graph Neural Networks (GNNs) have boosted the performance of many graph related tasks such as node classification and graph classification. Recent researches show that graph neural networks are vulnerable to adversarial attacks, which deliberately add carefully created unnoticeable perturbation to the graph structure. The perturbation is usually created by adding/deleting a few edges, which might be noticeable even when the number of edges modified is small. In this paper, we propose a graph rewiring operation which affects the graph in a less noticeable way compared to adding/deleting edges. We then use reinforcement learning to learn the attack strategy based on the proposed rewiring operation. Experiments on real world graphs demonstrate the effectiveness of the proposed framework. To understand the proposed framework, we further analyze how its generated perturbation to the graph structure affects the output of the target model.
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