Recent advances in Graph Convolutional Neural Networks (GCNNs) have shown their efficiency for non-Euclidean data on graphs, which often require a large amount of labeled data with high cost. It it thus critical to learn graph feature representations in an unsupervised manner in practice. To this end, we propose a novel unsupervised learning of Graph Transformation Equivariant Representations (GraphTER), aiming to capture intrinsic patterns of graph structure under both global and local transformations. Specifically, we allow to sample different groups of nodes from a graph and then transform them node-wise isotropically or anisotropically. Then, we self-train a representation encoder to capture the graph structures by reconstructing these node-wise transformations from the feature representations of the original and transformed graphs. In experiments, we apply the learned GraphTER to graphs of 3D point cloud data, and results on point cloud segmentation/classification show that GraphTER significantly outperforms state-of-the-art unsupervised approaches and pushes greatly closer towards the upper bound set by the fully supervised counterparts. The code is available at: https://github.com/gyshgx868/graph-ter.
翻译:图表进化神经网络(GCNNS)最近的进展表明,它们对于图表上的非欧化神经网络(GCNNS)数据的效率很高,通常需要大量成本高的标签数据。因此,以不受监督的方式在实践中学习图形特征显示方式至关重要。为此,我们提议在无监督的情况下学习新的未经监督的图形变形变形图示(Grapheter),目的是在全球和局部变形中捕捉图形结构的内在模式。具体地说,我们允许从图表中抽取不同组的结点,然后将其转换为非非异位或非亚学数据。然后,我们自我培养一个代表编码器,以便从原始和变形图的特征显示中重建这些节点性变形图示。在实验中,我们将所学过的图解用于3D点云数据的图解图解,以及点云分解/分类化结果显示,Gegraphter 明显地超越了状态- 艺术非统性和非统性的方法,并大大地推向上层结构结构结构。 ALs ALs/ grabs