Recently, there has been great success in applying deep neural networks on graph structured data. Most work, however, focuses on either node- or graph-level supervised learning, such as node, link or graph classification or node-level unsupervised learning (e.g. node clustering). Despite its wide range of possible applications, graph-level unsupervised learning has not received much attention yet. This might be mainly attributed to the high representation complexity of graphs, which can be represented by n! equivalent adjacency matrices, where n is the number of nodes. In this work we address this issue by proposing a permutation-invariant variational autoencoder for graph structured data. Our proposed model indirectly learns to match the node ordering of input and output graph, without imposing a particular node ordering or performing expensive graph matching. We demonstrate the effectiveness of our proposed model on various graph reconstruction and generation tasks and evaluate the expressive power of extracted representations for downstream graph-level classification and regression.
翻译:最近,在图形结构化数据中应用深层神经网络取得了巨大成功。然而,大多数工作的重点要么是节点或图形级监督学习,例如节点、链接或图形分类,要么是节点一级不受监督的学习(例如节点群集)。尽管可能的应用范围很广,但图层一级未经监督的学习尚未受到多少关注。这主要归功于图表的高度代表性复杂性,其表现方式可以是n.等量的相邻矩阵,其中n是节点的数量。在这项工作中,我们通过为图形结构化数据建议一个变异性自动coder来解决这一问题。我们提议的模型间接地学会了匹配输入和输出图的节点顺序,而没有强加特定的节点命令或进行昂贵的图表匹配。我们展示了我们提出的各种图表重建和生成任务模型的有效性,并评估了下游图表级分类和回归的提取图解表的表达力。