The hyperbolic random graph model (HRG) has proven useful in the analysis of scale-free networks, which are ubiquitous in many fields, from social network analysis to biology. However, working with this model is algorithmically and conceptually challenging because of the nature of the distances in the hyperbolic plane. In this paper we study the algorithmic properties of regularly generated triangulations in the hyperbolic plane. We propose a discrete variant of the HRG model where nodes are mapped to the vertices of such a triangulation; our algorithms allow us to work with this model in a simple yet efficient way. We present experimental results conducted on real world networks to evaluate the practical benefits of DHRG in comparison to the HRG model.
翻译:双曲随机图表模型(HRG)已证明在分析无规模网络方面很有用,从社会网络分析到生物学等许多领域无处不在。然而,由于双曲平面的距离性质,与这一模型合作在逻辑上和概念上具有挑战性。在本文中,我们研究了在双曲平面上定期生成的三角测量的算法特性。我们提出了HRG模型的一个离散变量,其中将节点映射到这种三角的顶端;我们的算法使我们能够以简单而有效的方式与这一模型合作。我们介绍了在现实世界网络上进行的实验结果,以比照HRG模型评估DHRG的实际效益。