Subgraph representation learning based on Graph Neural Network (GNN) has broad applications in chemistry and biology, such as molecule property prediction and gene collaborative function prediction. On the other hand, graph augmentation techniques have shown promising results in improving graph-based and node-based classification tasks but are rarely explored in the GNN-based subgraph representation learning literature. In this work, we developed a novel multiview augmentation mechanism to improve subgraph representation learning and thus the accuracy of downstream prediction tasks. The augmentation technique creates multiple variants of subgraphs and embeds these variants into the original graph to achieve both high training efficiency, scalability, and improved accuracy. Experiments on several real-world subgraph benchmarks demonstrate the superiority of our proposed multi-view augmentation techniques.
翻译:基于图形神经网络(GNN)的子图代表学习在化学和生物学中广泛应用,例如分子属性预测和基因协作功能预测;另一方面,图形扩增技术在改进基于图形和节点的分类任务方面显示出有希望的成果,但在基于GNN的子图代表学习文献中很少加以探讨;在这项工作中,我们开发了一个新型的多视角增强机制,以改进子图代表学习,从而改进下游预测任务的准确性。增强技术创造了多种子图变种,并将这些变种嵌入原始图表,以实现高培训效率、可缩缩缩和更高的准确性。关于几个实际世界子图基准的实验显示了我们拟议的多视角增强技术的优越性。