Link prediction is a fundamental problem in graph data analysis. While most of the literature focuses on transductive link prediction that requires all the graph nodes and majority of links in training, inductive link prediction, which only uses a proportion of the nodes and their links in training, is a more challenging problem in various real-world applications. In this paper, we propose a meta-learning approach with graph neural networks for link prediction: Neural Processes for Graph Neural Networks (NPGNN), which can perform both transductive and inductive learning tasks and adapt to patterns in a large new graph after training with a small subgraph. Experiments on real-world graphs are conducted to validate our model, where the results suggest that the proposed method achieves stronger performance compared to other state-of-the-art models, and meanwhile generalizes well when training on a small subgraph.
翻译:链接预测是图表数据分析中的一个根本问题。 虽然大多数文献侧重于需要所有图形节点和大部分培训链接的感应连接预测,但只使用部分节点及其在培训中的链接的感应连接预测是各种现实世界应用中一个更具有挑战性的问题。 在本文中,我们提出了与图形神经网络进行链接预测的元学习方法:图形神经网络神经过程(NPGNN),它可以执行感应和感应学习任务,并在用小型子图进行训练后适应于大型新图表的模式。 现实世界图的实验是为了验证我们的模型,结果显示,与其它最先进的模型相比,拟议的方法能取得更强的性能,同时,在进行小型子图的培训时可以很好地概括。