Min Yimeng, Wenkel Frederik, Wolf Guy
Mila - Quebec AI Institute Montreal, QC, Canada.
Dept. of Math. and Stat. Université de Montréal Mila - Quebec AI Institute Montreal, QC, Canada.
Adv Neural Inf Process Syst. 2020 Dec;33:14498-14508.
Graph convolutional networks (GCNs) have shown promising results in processing graph data by extracting structure-aware features. This gave rise to extensive work in geometric deep learning, focusing on designing network architectures that ensure neuron activations conform to regularity patterns within the input graph. However, in most cases the graph structure is only accounted for by considering the similarity of activations between adjacent nodes, which limits the capabilities of such methods to discriminate between nodes in a graph. Here, we propose to augment conventional GCNs with geometric scattering transforms and residual convolutions. The former enables band-pass filtering of graph signals, thus alleviating the so-called oversmoothing often encountered in GCNs, while the latter is introduced to clear the resulting features of high-frequency noise. We establish the advantages of the presented Scattering GCN with both theoretical results establishing the complementary benefits of scattering and GCN features, as well as experimental results showing the benefits of our method compared to leading graph neural networks for semi-supervised node classification, including the recently proposed GAT network that typically alleviates oversmoothing using graph attention mechanisms.
图卷积网络(GCN)通过提取结构感知特征,在处理图数据方面展现出了良好的效果。这引发了几何深度学习领域的广泛研究,重点在于设计能确保神经元激活符合输入图中规则模式的网络架构。然而,在大多数情况下,图结构仅通过考虑相邻节点之间激活的相似性来体现,这限制了此类方法区分图中节点的能力。在此,我们提议用几何散射变换和残差卷积来增强传统的GCN。前者能对图信号进行带通滤波,从而减轻GCN中经常遇到的所谓过平滑问题,而引入后者是为了清除所得特征中的高频噪声。我们通过理论结果证明散射和GCN特征的互补优势,以及实验结果表明我们的方法相较于用于半监督节点分类的领先图神经网络(包括最近提出的通常使用图注意力机制减轻过平滑的GAT网络)的优势,确立了所提出的散射GCN的优势。