Numerous network models have been investigated to gain insights into the origins of fractality. In this work, we introduce two novel network models, to better understand the growing mechanism and structural characteristics of fractal networks. The Repulsion Based Fractal Model (RBFM) is built on the well-known Song-Havlin-Makse (SHM) model, but in RBFM repulsion is always present among a specific group of nodes. The model resolves the contradiction between the SHM model and the Hub Attraction Dynamical Growth model, by showing that repulsion is the characteristic that induces fractality. The Lattice Small-world Transition Model (LSwTM) was motivated by the fact that repulsion directly influences the node distances. Through LSwTM we study the fractal-small-world transition. The model illustrates the transition on a fixed number of nodes and edges using a preferential-attachment-based edge rewiring process. It shows that a small average distance works against fractal scaling, and also demonstrates that fractality is not a dichotomous property, continuous transition can be observed between the pure fractal and non-fractal characteristics.
翻译:已经对众多网络模型进行了调查,以深入了解分形的起源。 在这项工作中,我们引入了两个新型网络模型,以更好地了解分形网络不断增长的机制和结构特征。 反转基础分形模型(RBFM)建在著名的Song-Havlin-Makse(SHM)模型上, 但在RBF回流中, 总是存在于特定的节点组中。 该模型解决了SHM模型和Hub吸引动态增长模型之间的矛盾。 该模型通过显示反转是引起分形的特征。 Lattice Small- World过渡模型(LSwTM)的动机是反转直接影响节点距离的事实。 我们通过LSwTM研究分流- Small- Small-World过渡。 该模型用基于优惠的边缘再线进程来说明固定数目的节点和边缘的过渡。 该模型显示, 微平均距离工作可以防止分形缩, 并且也表明, 分形和直形的特性之间没有观察到的分形, 。