Learning from graph and relational data plays a major role in many applications including social network analysis, marketing, e-commerce, information retrieval, knowledge modeling, medical and biological sciences, engineering, and others. Recently, Graph Neural Networks (GNNs) have emerged as a promising new learning framework capable of bringing the power of deep representation learning to graph and relational data. This ever-growing body of research has shown that GNNs achieve state-of-the-art performance for problems such as link prediction, fraud detection, target-ligand binding activity prediction, knowledge-graph completion, and product recommendations. In practice, many of the real-world graphs are very large. It is urgent to have scalable solutions to train GNN on large graphs efficiently.
Da ZhengMinjie WangQuan GanZheng ZhangGeroge Karypis
Da ZhengMinjie WangQuan GanZheng ZhangGeorge Karypis
Andrea CiniIvan MariscaFilippo Maria BianchiCesare Alippi
Shengzhong ZhangYimin D. ZhangBisheng LiWenjie YangMin ZhouZengfeng Huang