Graph convolutional networks have been successful in addressing graph-based tasks such as semi-supervised node classification. Existing methods use a network structure defined by the user based on experimentation with fixed number of layers and neurons per layer and employ a layer-wise propagation rule to obtain the node embeddings. Designing an automatic process to define a problem-dependant architecture for graph convolutional networks can greatly help to reduce the need for manual design of the structure of the model in the training process. In this paper, we propose a method to automatically build compact and task-specific graph convolutional networks. Experimental results on widely used publicly available datasets show that the proposed method outperforms related methods based on convolutional graph networks in terms of classification performance and network compactness.
翻译:现有方法使用用户根据对每层固定层数和神经元数的实验确定的网络结构,并使用一个分层传播规则来获取节点嵌入。设计一个自动程序来界定图形组合网络的问题依赖结构可以大大有助于减少在培训过程中手工设计模型结构的需要。本文提出一种方法,以自动建立紧凑和特定任务图表共流网络。广泛使用的公开数据集的实验结果显示,拟议的方法在分类性能和网络紧凑性方面,优于基于同层图网络的相关方法。