Spectral graph convolutional networks (SGCNs) have been attracting increasing attention in graph representation learning partly due to their interpretability through the prism of the established graph signal processing framework. However, existing SGCNs are limited in implementing graph convolutions with rigid transforms that could not adapt to signals residing on graphs and tasks at hand. In this paper, we propose a novel class of spectral graph convolutional networks that implement graph convolutions with adaptive graph wavelets. Specifically, the adaptive graph wavelets are learned with neural network-parameterized lifting structures, where structure-aware attention-based lifting operations are developed to jointly consider graph structures and node features. We propose to lift based on diffusion wavelets to alleviate the structural information loss induced by partitioning non-bipartite graphs. By design, the locality and sparsity of the resulting wavelet transform as well as the scalability of the lifting structure for large and varying-size graphs are guaranteed. We further derive a soft-thresholding filtering operation by learning sparse graph representations in terms of the learned wavelets, which improves the scalability and interpretablity, and yield a localized, efficient and scalable spectral graph convolution. To ensure that the learned graph representations are invariant to node permutations, a layer is employed at the input of the networks to reorder the nodes according to their local topology information. We evaluate the proposed networks in both node-level and graph-level representation learning tasks on benchmark citation and bioinformatics graph datasets. Extensive experiments demonstrate the superiority of the proposed networks over existing SGCNs in terms of accuracy, efficiency and scalability.
翻译:图形图象变异网络(SGCNs)在图形显示学习中日益引起人们的注意,其部分原因是,通过固定的图形信号处理框架的棱镜镜,可以解释,但是,现有的SGCN在采用硬变形,无法适应现有图表和任务中的信号时,在采用硬变形,无法适应现有图象和任务时,在图形显示中,我们建议建立一个新型的光谱图变异网络类别,用适应性图图图波波子来实施图解变异变。具体地说,适应性图波子波子在通过神经网络调整的平标码提升结构中学习,通过基于结构的注意提升行动,共同考虑图形结构和节点特点。我们提议,在扩散波子图图上,在分析中,通过升级和解释,在数字图层中,从上到图层的变异异变率和变率分析,从图层到图层的变异变率和变率分析,从图层的变数和变数分析,从图层到图层的变化,从图层的变化和变数层的变和变率分析,从图和变变的图和变数分析,从图图图和变现到图图图和变的变的变和变现到图图和变和变。