Graph convolutional neural network provides good solutions for node classification and other tasks with non-Euclidean data. There are several graph convolutional models that attempt to develop deep networks but do not cause serious over-smoothing at the same time. Considering that the wavelet transform generally has a stronger ability to extract useful information than the Fourier transform, we propose a new deep graph wavelet convolutional network (DeepGWC) for semi-supervised node classification tasks. Based on the optimized static filtering matrix parameters of vanilla graph wavelet neural networks and the combination of Fourier bases and wavelet ones, DeepGWC is constructed together with the reuse of residual connection and identity mappings in network architectures. Extensive experiments on three benchmark datasets including Cora, Citeseer, and Pubmed are conducted. The experimental results demonstrate that our DeepGWC outperforms existing graph deep models with the help of additional wavelet bases and achieves new state-of-the-art performances eventually.
翻译:图表共振神经网络为节点分类和其他任务提供了良好的解决方案,其中含有非欧元数据。 有一些图形共振模型试图开发深网络,但不会同时造成严重的过度移动。 考虑到波状变换一般比Fourier变换更有能力获取有用信息,我们提议为半监督的节点分类任务建立一个新的深图共振波变换网络(DeepGWC) 。根据香草图中波状神经网络的优化静态过滤矩阵参数以及Fourier基地和波列的组合,DeepGWC与网络结构中剩余连接和身份绘图的再利用一起建造。对包括Cora、Citeseer和Pubmed在内的三个基准数据集进行了广泛的实验。实验结果显示,我们的深GWC在额外的波列基地的帮助下超越了现有的图形深模型,最终实现了新的状态性表现。