In this thesis, we propose a novel framework to automatically utilize task-dependent semantic information which is encoded in heterogeneous information networks (HINs). Specifically, we search for a meta graph, which can capture more complex semantic relations than a meta path, to determine how graph neural networks (GNNs) propagate messages along different types of edges. We formalize the problem within the framework of neural architecture search (NAS) and then perform the search in a differentiable manner. We design an expressive search space in the form of a directed acyclic graph (DAG) to represent candidate meta graphs for a HIN, and we propose task-dependent type constraint to filter out those edge types along which message passing has no effect on the representations of nodes tha...[ Read more ]
Yang GaoPeng ZhangZhao LiChuan ZhouYongchao LiuYue Hu
Yang GaoPeng ZhangChuan ZhouHong YangZhao LiYue HuPhilip S. Yu
Zeyang ZhangZiwei ZhangXin WangYijian QinZhou QinWenwu Zhu
Beini XieHeng ChangZiwei ZhangXin WangDaixin WangZhiqiang ZhangRex YingWenwu Zhu