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Representation Learning on Graphs with Jumping Knowledge Networks

机译:具有跳跃知识网络的图表示学习

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Recent deep learning approaches for representation learning on graphs follow a neighborhood aggregation procedure. We analyze some important properties of these models, and propose a strategy to overcome those. In particular, the range of "neighboring" nodes that a node’s representation draws from strongly depends on the graph structure, analogous to the spread of a random walk. To adapt to local neighborhood properties and tasks, we explore an architecture – jumping knowledge (JK) networks – that flexibly leverages, for each node, different neighborhood ranges to enable better structure-aware representation. In a number of experiments on social, bioinformatics and citation networks, we demonstrate that our model achieves state-of-the-art performance. Furthermore, combining the JK framework with models like Graph Convolutional Networks, GraphSAGE and Graph Attention Networks consistently improves those models’ performance.
机译:用于图上表示学习的最新深度学习方法遵循邻域聚合过程。我们分析了这些模型的一些重要属性,并提出了克服这些问题的策略。特别是,节点表示从中绘制的“相邻”节点的范围在很大程度上取决于图的结构,类似于随机游走的传播。为了适应本地邻居的属性和任务,我们探索了一种架构-知识跳跃(JK)网络-灵活地为每个节点利用不同的邻居范围,以实现更好的结构感知表示。在社会,生物信息学和引文网络的大量实验中,我们证明了我们的模型实现了最先进的性能。此外,将JK框架与Graph卷积网络,GraphSAGE和Graph Attention Networks等模型相结合,可以持续改善这些模型的性能。

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