Graph convolutional networks are becoming indispensable for deep learning from graph-structured data. Most of the existing graph convolutional networks share two big shortcomings. First, they are essentially low-pass filters, thus the potentially useful middle and high frequency band of graph signals are ignored. Second, the bandwidth of existing graph convolutional filters is fixed. Parameters of a graph convolutional filter only transform the graph inputs without changing the curvature of a graph convolutional filter function. In reality, we are uncertain about whether we should retain or cut off the frequency at a certain point unless we have expert domain knowledge. In this paper, we propose Automatic Graph Convolutional Networks (AutoGCN) to capture the full spectrum of graph signals and automatically update the bandwidth of graph convolutional filters. While it is based on graph spectral theory, our AutoGCN is also localized in space and has a spatial form. Experimental results show that AutoGCN achieves significant improvement over baseline methods which only work as low-pass filters.
翻译:从图形结构化数据深层学习的图组化网络正在变得不可或缺。 大多数现有的图组化网络都存在两个大缺点。 首先,它们基本上是低端过滤器,因此忽略了潜在有用的中高频图形信号带。 其次,现有图组化过滤器的带宽是固定的。 图组化过滤器的参数只能改变图组化输入,而不会改变图组化过滤器的曲线功能。 事实上,我们不确定我们是否应该在某一点保留或切断频率,除非我们有专家域知识。 在本文中,我们提议自动图组变网络(AutoGCN)来捕捉图组信号的全部频谱,并自动更新图组变过滤器的带宽。虽然它以图形光谱理论为基础,但我们的AutoGCN在空间中也是局部的,并且有空间形态。实验结果显示,AutoGCN在仅作为低通道过滤器使用的基线方法上取得了显著的改进。