In many real-world network datasets such as co-authorship, co-citation, email communication, etc., relationships are complex and go beyond pairwise. Hypergraphs provide a flexible and natural modeling tool to model such complex relationships. The obvious existence of such complex relationships in many real-world networks naturaly motivates the problem of learning with hypergraphs. A popular learning paradigm is hypergraph-based semi-supervised learning (SSL) where the goal is to assign labels to initially unlabeled vertices in a hypergraph. Motivated by the fact that a graph convolutional network (GCN) has been effective for graph-based SSL, we propose HyperGCN, a novel GCN for SSL on attributed hypergraphs. Additionally, we show how HyperGCN can be used as a learning-based approach for combinatorial optimisation on NP-hard hypergraph problems. We demonstrate HyperGCN's effectiveness through detailed experimentation on real-world hypergraphs.
翻译:在许多真实世界的网络数据集中,如共同编写、共同引用、电子邮件通信等,关系复杂,超越了对称关系。超时图为模拟这种复杂关系提供了一个灵活和自然的建模工具。在许多真实世界网络中,显然存在这种复杂关系,自然地促使人们学习高音问题。一种流行的学习范式是以高光谱为基础的半监督学习(SSL),目的是在高光谱中将标签指定给最初未贴标签的脊椎。我们之所以这样做,是因为图形相向网络(GCN)对基于图形的 SL有效,我们提议HyperGCN,这是SLS在被授予的高光谱上的新颖的GCN。此外,我们展示了HyGCN如何作为一种以学习为基础的方法,用于对NP-硬性高光谱问题进行复选。我们通过对真实世界高光谱进行详细实验,展示超高频GCN的有效性。