Complex networks are pervasive in the real world, capturing dyadic interactions between pairs of vertices, and a large corpus has emerged on their mining and modeling. However, many phenomena are comprised of polyadic interactions between more than two vertices. Such complex hypergraphs range from emails among groups of individuals, scholarly collaboration, or joint interactions of proteins in living cells. A key generative principle within social and other complex networks is transitivity, where friends of friends are more likely friends. The previously proposed Iterated Local Transitivity (ILT) model incorporated transitivity as an evolutionary mechanism. The ILT model provably satisfies many observed properties of social networks, such as densification, low average distances, and high clustering coefficients. We propose a new, generative model for complex hypergraphs based on transitivity, called the Iterated Local Transitivity Hypergraph (or ILTH) model. In ILTH, we iteratively apply the principle of transitivity to form new hypergraphs. The resulting model generates hypergraphs simulating properties observed in real-world complex hypergraphs, such as densification and low average distances. We consider properties unique to hypergraphs not captured by their 2-section. We show that certain motifs, which are specified subhypergraphs of small order, have faster growth rates in ILTH hypergraphs than in random hypergraphs with the same order and expected average degree. We show that the graphs admitting a homomorphism into the 2-section of the initial hypergraph appear as induced subgraphs in the 2-section of ILTH hypergraphs. We consider new and existing hypergraph clustering coefficients, and show that these coefficients have larger values in ILTH hypergraphs than in comparable random hypergraphs.
翻译:复杂的网络在现实世界中十分普遍, 捕捉了双脊椎之间的三角互动, 而在它们的采矿和建模上也出现了一个大体。 但是, 许多现象是由两个以上的脊椎之间的多面性互动所组成的。 这种复杂的喜剧包括个人群体之间的电子邮件、 学术协作或活细胞中蛋白的相互作用。 在社会和其他复杂网络中, 一个关键的基因化原则是过渡性, 朋友的朋友更可能是朋友。 先前提议的 迭代 本地流转( ILT) 模型将过渡性( ILLT) 模型纳入进化机制。 ILLT 模型可以明显地满足许多观察到的社会网络的可比较性, 如密度、 低平均距离和高集聚系数等。 我们为复杂的高音集提出了一个新的基因化模型, 这个模型基于过渡性, 称为“ 本地流转性超高” 模式。 在 ILTHTH 中, 我们反复应用了过渡性原则来形成新的高度数据。 由此产生的模型生成了在实体复杂的I 初始海图中观测到的属性,, 例如, 直径直径2 的直径直径直径直径显示高端的直径, 我们的直径的直径显示的直径的直径的直径, 直径的直径的直径, 。