Graph neural networks generalize conventional neural networks to graph-structured data and have received widespread attention due to their impressive representation ability. In spite of the remarkable achievements, the performance of Euclidean models in graph-related learning is still bounded and limited by the representation ability of Euclidean geometry, especially for datasets with highly non-Euclidean latent anatomy. Recently, hyperbolic space has gained increasing popularity in processing graph data with tree-like structure and power-law distribution, owing to its exponential growth property. In this survey, we comprehensively revisit the technical details of the current hyperbolic graph neural networks, unifying them into a general framework and summarizing the variants of each component. More importantly, we present various HGNN-related applications. Last, we also identify several challenges, which potentially serve as guidelines for further flourishing the achievements of graph learning in hyperbolic spaces.
翻译:尽管取得了令人瞩目的成就,但欧洲克利珀顿模型在与图形有关的学习方面的表现仍然受到欧洲克利珀顿几何学的体现能力的制约和限制,特别是对于高度非欧洲克利珀顿潜伏解剖的数据集而言。最近,超曲空间由于其指数增长特性,在用树形结构和电法分布处理图形数据方面越来越受欢迎。在这次调查中,我们全面审查了当前超双曲形神经网络的技术细节,将其统一为一个总体框架,并总结了每个组成部分的变式。更重要的是,我们提出了各种与HGNN有关的各种应用。最后,我们还确定了一些挑战,这些挑战有可能成为在超偏白空间进一步发扬图表学习成果的指导方针。