Publication | Open Access
Privacy-Preserving Graph Neural Network for Node Classification.
26
Citations
38
References
2020
Year
Privacy ProtectionEngineeringPrivacy-preserving TechniquesMachine LearningInformation SecurityData SciencePrivacy SystemPrivacy ServiceData PrivacyComputer ScienceDeep LearningDifferential PrivacyPrivacyData SecurityCryptographyGraph TheoryNode ClassificationEdge ComputingFederated LearningGraph Neural NetworkComputation GraphGraph Data
Recently, Graph Neural Network (GNN) has achieved remarkable progresses in various real-world tasks on graph data, consisting of node features and the adjacent information between different nodes. High-performance GNN models always depend on both rich features and complete edge information in graph. However, such information could possibly be isolated by different data holders in practice, which is the so-called data isolation problem. To solve this problem, in this paper, we propose a Privacy-Preserving GNN (PPGNN) learning paradigm for node classification task, which can be generalized to existing GNN models. Specifically, we split the computation graph into two parts. We leave the private data (i.e., features, edges, and labels) related computations on data holders, and delegate the rest of computations to a semi-honest server. We conduct experiments on three benchmarks and the results demonstrate that PPGNN significantly outperforms the GNN models trained on the isolated data and has comparable performance with the traditional GNN trained on the mixed plaintext data.
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