Skums Pavel, Bunimovich Leonid
Department of Computer Science, Georgia State University, 1 Park Pl NE, Atlanta, GA 30303, USA.
School of Mathematics, Georgia Institute of Technology, 686 Cherry St NW, Atlanta, GA 30313, USA.
J Complex Netw. 2020 Aug;8(4):cnaa037. doi: 10.1093/comnet/cnaa037. Epub 2020 Nov 18.
Fractals are geometric objects that are self-similar at different scales and whose geometric dimensions differ from so-called fractal dimensions. Fractals describe complex continuous structures in nature. Although indications of self-similarity and fractality of complex networks has been previously observed, it is challenging to adapt the machinery from the theory of fractality of continuous objects to discrete objects such as networks. In this article, we identify and study fractal networks using the innate methods of graph theory and combinatorics. We establish analogues of topological (Lebesgue) and fractal (Hausdorff) dimensions for graphs and demonstrate that they are naturally related to known graph-theoretical characteristics: rank dimension and product dimension. Our approach reveals how self-similarity and fractality of a network are defined by a pattern of overlaps between densely connected network communities. It allows us to identify fractal graphs, explore the relations between graph fractality, graph colourings and graph descriptive complexity, and analyse the fractality of several classes of graphs and network models, as well as of a number of real-life networks. We demonstrate the application of our framework in evolutionary biology and virology by analysing networks of viral strains sampled at different stages of evolution inside their hosts. Our methodology revealed gradual self-organization of intra-host viral populations over the course of infection and their adaptation to the host environment. The obtained results lay a foundation for studying fractal properties of complex networks using combinatorial methods and algorithms.
分形是在不同尺度下具有自相似性且其几何维度不同于所谓分形维数的几何对象。分形描述了自然界中复杂的连续结构。尽管此前已观察到复杂网络的自相似性和分形性迹象,但将连续对象分形理论的方法应用于网络等离散对象具有挑战性。在本文中,我们使用图论和组合数学的固有方法来识别和研究分形网络。我们为图建立了拓扑(勒贝格)维和分形(豪斯多夫)维的类似物,并证明它们与已知的图论特征:秩维和乘积维自然相关。我们的方法揭示了网络的自相似性和分形性是如何由紧密连接的网络社区之间的重叠模式定义的。它使我们能够识别分形图,探索图的分形性、图着色和图描述复杂性之间的关系,并分析几类图和网络模型以及一些现实生活网络的分形性。我们通过分析在宿主内不同进化阶段采样的病毒株网络,展示了我们的框架在进化生物学和病毒学中的应用。我们的方法揭示了宿主内病毒群体在感染过程中的逐渐自组织以及它们对宿主环境的适应。所得结果为使用组合方法和算法研究复杂网络的分形性质奠定了基础。