Perotti Juan Ignacio, Tessone Claudio Juan, Caldarelli Guido
IMT Institute for Advanced Studies Lucca, Piazza San Francesco 19, I-55100 Lucca, Italy.
URPP Social Networks, Universität Zürich, Andreasstrasse 15, CH-8050 Zürich, Switzerland.
Phys Rev E Stat Nonlin Soft Matter Phys. 2015 Dec;92(6):062825. doi: 10.1103/PhysRevE.92.062825. Epub 2015 Dec 22.
The quest for a quantitative characterization of community and modular structure of complex networks produced a variety of methods and algorithms to classify different networks. However, it is not clear if such methods provide consistent, robust, and meaningful results when considering hierarchies as a whole. Part of the problem is the lack of a similarity measure for the comparison of hierarchical community structures. In this work we give a contribution by introducing the hierarchical mutual information, which is a generalization of the traditional mutual information and makes it possible to compare hierarchical partitions and hierarchical community structures. The normalized version of the hierarchical mutual information should behave analogously to the traditional normalized mutual information. Here the correct behavior of the hierarchical mutual information is corroborated on an extensive battery of numerical experiments. The experiments are performed on artificial hierarchies and on the hierarchical community structure of artificial and empirical networks. Furthermore, the experiments illustrate some of the practical applications of the hierarchical mutual information, namely the comparison of different community detection methods and the study of the consistency, robustness, and temporal evolution of the hierarchical modular structure of networks.
对复杂网络的群落和模块结构进行定量表征的探索产生了各种用于对不同网络进行分类的方法和算法。然而,当将层次结构作为一个整体来考虑时,这些方法是否能提供一致、稳健且有意义的结果尚不清楚。部分问题在于缺乏用于比较层次化群落结构的相似性度量。在这项工作中,我们通过引入层次互信息做出了贡献,它是传统互信息的推广,使得比较层次划分和层次化群落结构成为可能。层次互信息的归一化版本应与传统归一化互信息表现类似。在此,通过一系列广泛的数值实验证实了层次互信息的正确行为。这些实验是在人工层次结构以及人工和实证网络的层次化群落结构上进行的。此外,实验还说明了层次互信息的一些实际应用,即不同群落检测方法的比较以及网络层次化模块结构的一致性、稳健性和时间演化的研究。