Recently, Graph Neural Network (GNN) has achieved remarkable success in various real-world problems on graph data. However in most industries, data exists in the form of isolated islands and the data privacy and security is also an important issue. In this paper, we propose FedVGCN, a federated GCN learning paradigm for privacy-preserving node classification task under data vertically partitioned setting, which can be generalized to existing GCN models. Specifically, we split the computation graph data into two parts. For each iteration of the training process, the two parties transfer intermediate results to each other under homomorphic encryption. We conduct experiments on benchmark data and the results demonstrate the effectiveness of FedVGCN in the case of GraphSage.
翻译:最近,图表神经网络(GNN)在图表数据的各种现实世界问题方面取得了显著成功,但在大多数行业中,数据以孤立岛屿的形式存在,数据隐私和安全也是一个重要问题,在本文中,我们提议FDVGCN,这是在数据垂直分割环境下,在数据垂直分割的情况下,对隐私保护节点分类任务采用的一种联合GCN学习模式,可以推广到现有的GCN模式。具体地说,我们将计算图表数据分为两部分,对培训过程的每一次迭代,双方在同质加密下相互转让中间结果。我们进行基准数据实验,结果显示FDVGCN在GimagSage案中的有效性。