Graph Convolutional Neural Networks (Graph CNNs) are generalizations of classical CNNs to handle graph data such as molecular data, point could and social networks. Current filters in graph CNNs are built for fixed and shared graph structure. However, for most real data, the graph structures varies in both size and connectivity. The paper proposes a generalized and flexible graph CNN taking data of arbitrary graph structure as input. In that way a task-driven adaptive graph is learned for each graph data while training. To efficiently learn the graph, a distance metric learning is proposed. Extensive experiments on nine graph-structured datasets have demonstrated the superior performance improvement on both convergence speed and predictive accuracy.
翻译:古典CNN(Graph CNN)对古典CNN(Craft Convolutional Neal Networks)(Grap Convolutional Neal Networks)(Graph CNN)是处理分子数据、点数和社交网络等图表数据的一般描述。目前CNN(Greg CNN)中的过滤器是为固定和共享的图形结构而建立的。然而,对于大多数真实的数据来说,图形结构在大小和连通性方面各有不同。本文建议用一个通用和灵活的图形CNNCNN(G)将任意图形结构的数据作为输入。通过这种方式,在培训过程中为每个图表数据学习一个任务驱动的适应性图表。为了高效地学习图形,建议采用远程计量学习。在9个图表结构数据集上进行的广泛实验表明,在趋同速度和预测准确性两方面的性能都有了较高的改进。