Potsdam Institute for Climate Impact Research, Telegraphenberg A31, 14473 Potsdam, Germany, EU.
Department of Physics, Humboldt University, Newtonstr. 15, 12489 Berlin, Germany, EU.
Phys Rev E. 2017 Oct;96(4-1):042304. doi: 10.1103/PhysRevE.96.042304. Epub 2017 Oct 17.
Complex networks are usually characterized in terms of their topological, spatial, or information-theoretic properties and combinations of the associated metrics are used to discriminate networks into different classes or categories. However, even with the present variety of characteristics at hand it still remains a subject of current research to appropriately quantify a network's complexity and correspondingly discriminate between different types of complex networks, like infrastructure or social networks, on such a basis. Here we explore the possibility to classify complex networks by means of a statistical complexity measure that has formerly been successfully applied to distinguish different types of chaotic and stochastic time series. It is composed of a network's averaged per-node entropic measure characterizing the network's information content and the associated Jenson-Shannon divergence as a measure of disequilibrium. We study 29 real-world networks and show that networks of the same category tend to cluster in distinct areas of the resulting complexity-entropy plane. We demonstrate that within our framework, connectome networks exhibit among the highest complexity while, e.g., transportation and infrastructure networks display significantly lower values. Furthermore, we demonstrate the utility of our framework by applying it to families of random scale-free and Watts-Strogatz model networks. We then show in a second application that the proposed framework is useful to objectively construct threshold-based networks, such as functional climate networks or recurrence networks, by choosing the threshold such that the statistical network complexity is maximized.
复杂网络通常具有拓扑、空间或信息论性质,并且可以通过相关指标的组合将网络划分为不同的类别。然而,即使目前具有多种特征,仍然需要一种合适的方法来量化网络的复杂性,并在此基础上区分不同类型的复杂网络,例如基础设施网络或社交网络。在这里,我们探索了一种统计复杂性度量方法,该方法以前曾成功用于区分不同类型的混沌和随机时间序列。它由网络的平均节点熵度量组成,该度量表征网络的信息含量,以及作为不平衡度量的詹森-香农散度。我们研究了 29 个真实世界网络,并表明具有相同类别的网络往往会聚集在复杂性-熵平面的不同区域中。我们证明,在我们的框架内,连接组网络表现出最高的复杂性,而例如交通和基础设施网络则显示出明显较低的值。此外,我们通过将其应用于随机无标度和 Watts-Strogatz 模型网络的族来证明我们框架的实用性。然后,我们在第二个应用中表明,该框架通过选择使统计网络复杂性最大化的阈值来客观地构建基于阈值的网络(例如功能气候网络或递归网络)是有用的。