The fractal nature of complex networks has received a great deal of research interest in the last two decades. Similarly to geometric fractals, the fractality of networks can also be defined with the so-called box-covering method. A network is called fractal if the minimum number of boxes needed to cover the entire network follows a power-law relation with the size of the boxes. The fractality of networks has been associated with various network properties throughout the years, for example, disassortativity, repulsion between hubs, long-range-repulsive correlation, and small edge betweenness centralities. However, these assertions are usually based on tailor-made network models and on a small number of real networks, hence their ubiquity is often disputed. Since fractal networks have been shown to have important properties, such as robustness against intentional attacks, it is in dire need to uncover the underlying mechanisms causing fractality. Hence, the main goal of this work is to get a better understanding of the origins of fractality in complex networks. To this end, we systematically review the previous results on the relationship between various network characteristics and fractality. Moreover, we perform a comprehensive analysis of these relations on five network models and a large number of real-world networks originating from six domains. We clarify which characteristics are universally present in fractal networks and which features are just artifacts or coincidences.
翻译:复杂网络的分野性质在过去二十年中引起了大量的研究兴趣。 与几何分形相似, 网络的分野性也可以以所谓的盒子覆盖法来界定。 如果覆盖整个网络所需的最低数量框与盒子大小有权力法关系, 网络的分野就被称为分形。 网络的分野性多年来一直与各种网络特性有关, 例如, 中心之间的不一致性、 反向性、 长期- 移动性相关性 和 中心之间的小边缘 。 然而, 这些说法通常以定制网络模型和少量真实网络为基础, 因而其普遍性经常引起争议。 由于分层网络已证明具有重要的特性, 比如对蓄意攻击的强度, 因此, 网络的分野性与各种网络特性相关联。 因此, 这项工作的主要目标是更好地了解复杂网络的分野性起源、 远程- 远程- 长期性关联以及 中心之间的小边缘性 。 然而, 至此, 我们系统地审视了过去五大网络的分野性特征 。