Random network models generated using sparse exchangeable graphs have provided a mechanism to study a wide variety of complex real-life networks. In particular, these models help with investigating power-law properties of degree distributions, number of edges, and other relevant network metrics which support the scale-free structure of networks. Previous work on such graphs imposes a marginal assumption of univariate regular variation (e.g., power-law tail) on the bivariate generating graphex function. In this paper, we study sparse exchangeable graphs generated by graphex functions which are multivariate regularly varying. We also focus on a different metric for our study: the distribution of the number of common vertices (connections) shared by a pair of vertices. The number being high for a fixed pair is an indicator of the original pair of vertices being connected. We find that the distribution of number of common connections are regularly varying as well, where the tail indices of regular variation are governed by the type of graphex function used. Our results are verified on simulated graphs by estimating the relevant tail index parameters.
翻译:使用稀少的可交换图形生成的随机网络模型提供了一种机制,用于研究各种复杂的实际生活网络。特别是,这些模型有助于调查支持网络规模结构的无规模结构的度分布、边缘数和其他相关网络度量的电法特性。这些图形以前的工作在生成图形函数的双变量生成图解函数上,对单面结构常规变异(如电法尾巴)作了边际假设。在本文中,我们研究了由多变量函数生成的图解函数生成的稀有可交换的图表,这些函数经常变异。我们还侧重于研究不同的指标:一对双顶脊椎共享的共同顶部(连接)数的分布情况。固定对子的数值高,是连接的顶脊椎原始数的指标。我们发现,共同连接数的分布也经常不同,经常由使用的图形函数类型决定。我们的结果通过估计相关的尾部索引参数,在模拟的图形上得到验证。