Jia LiY.-M. HuangHeng ChangYu Rong
Node classification and graph classification are two graph learning problems that predict the class label of a node and the class label of a graph respectively. A node of a graph usually represents a real-world entity, e.g., a user in a social network, or a document in a document citation network. In this work, we consider a more challenging but practically useful setting, in which a node itself is a graph instance. This leads to a hierarchical graph perspective which arises in many domains such as social network, biological network and document collection. We study the node classification problem in the hierarchical graph where a "node" is a graph instance. As labels are usually limited, we design a novel semi-supervised solution named SEAL-CI. SEAL-CI adopts an iterative framework that takes turns to update two modules, one working at the graph instance level and the other at the hierarchical graph level. To enforce a consistency among different levels of hierarchical graph, we propose the Hierarchical Graph Mutual Information (HGMI) and further present a way to compute HGMI with theoretical guarantee. We demonstrate the effectiveness of this hierarchical graph modeling and the proposed SEAL-CI method on text and social network data.
Jia LiYu RongHong ChengHelen MengWenbing HuangJunzhou Huang
Kangjie LiYixiong FengYicong GaoJian Qiu
Mohammad Hossein RohbanHamid R. Rabiee
Xiao LuoYusheng ZhaoYifang QinWei JuMing Zhang
Jonathan Serrano-PérezLuis Enrique Sucar