Multiple recent studies show a paradox in graph convolutional networks (GCNs), that is, shallow architectures limit the capability of learning information from high-order neighbors, while deep architectures suffer from over-smoothing or over-squashing. To enjoy the simplicity of shallow architectures and overcome their limits of neighborhood extension, in this work, we introduce Biaffine technique to improve the expressiveness of graph convolutional networks with a shallow architecture. The core design of our method is to learn direct dependency on long-distance neighbors for nodes, with which only one-hop message passing is capable of capturing rich information for node representation. Besides, we propose a multi-view contrastive learning method to exploit the representations learned from long-distance dependencies. Extensive experiments on nine graph benchmark datasets suggest that the shallow biaffine graph convolutional networks (BAGCN) significantly outperforms state-of-the-art GCNs (with deep or shallow architectures) on semi-supervised node classification. We further verify the effectiveness of biaffine design in node representation learning and the performance consistency on different sizes of training data.
翻译:最近多项研究显示,图层革命网络(GCNs)存在悖论,即浅层建筑限制了从高端邻居那里学习信息的能力,而深层建筑则受到过度移动或过度隔绝的影响。为了享受浅层建筑的简单性并克服其邻里延伸的局限性,我们在这项工作中采用了Biaffine技术来改善图层革命网络与浅层建筑的外观性。我们方法的核心设计是学习对长距离邻居节点的直接依赖性,即只有一跳信息传递才能捕捉到丰富的节点代表信息。此外,我们提出了一种多视角对比学习方法来利用从长距离依赖者那里获得的演示。对九张图表基准数据集的广泛实验表明,浅面两面图层革命网络(BAGCN)明显地超越了半超强节点分类的先进GCN(深层或浅层建筑)的状态。我们进一步核查了双翼设计在节点学习中的有效性以及不同规模数据的业绩一致性。