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引用次数: 0
摘要
图卷积将图的拓扑信息整合到学习中。在经典图算法中,消息传递对应于局部邻域的遍历。我们表明,通过距离保持嵌入结合额外的全局结构,如最短路径,可以提高性能。我们的方法,Gavotte,显著提高了一系列流行的图神经网络的性能,如GCN, GA T, graph SAGE和GCNII用于换能化学习。Gavotte还提高了图神经网络在全监督任务中的性能,尽管程度较小。由于高质量的嵌入是由Gavotte作为副产品生成的,我们利用这些嵌入的聚类算法来增强训练集并引入Gavotte+。我们在标签很少的数据集上的Gavotte+结果证明了用距离保持嵌入增强图卷积的优势。
Augmenting Graph Convolution with Distance Preserving Embedding for Improved Learning
Graph convolution incorporates topological information of a graph into learning. Message passing corresponds to traversal of a local neighborhood in classical graph algorithms. We show that incorporating additional global structures, such as shortest paths, through distance preserving embedding can improve performance. Our approach, Gavotte, significantly improves the performance of a range of popular graph neu-ral networks such as GCN, GA T,Graph SAGE, and GCNII for transductive learning. Gavotte also improves the performance of graph neural networks for full-supervised tasks, albeit to a smaller degree. As high-quality embeddings are generated by Gavotte as a by-product, we leverage clustering algorithms on these embed dings to augment the training set and introduce Gavotte+. Our results of Gavotte+ on datasets with very few labels demonstrate the advantage of augmenting graph convolution with distance preserving embedding.