Landi Pietro, Piccardi Carlo
Department of Electronics, Information and Bioengineering, Politecnico di Milano, I-20133 Milano, Italy.
Phys Rev E Stat Nonlin Soft Matter Phys. 2014 Jan;89(1):012814. doi: 10.1103/PhysRevE.89.012814. Epub 2014 Jan 28.
When analyzing important classes of complex interconnected systems, link directionality can hardly be neglected if a precise and effective picture of the structure and function of the system is needed. If community analysis is performed, the notion of "community" itself is called into question, since the property of having a comparatively looser external connectivity could refer to the inbound or outbound links only or to both categories. In this paper, we introduce the notions of in-, out-, and in-/out-community in order to correctly classify the directedness of the interaction of a subnetwork with the rest of the system. Furthermore, we extend the scope of community analysis by introducing the notions of in-, out-, and in-/out-pseudocommunity. They are subnetworks having strong internal connectivity but also important interactions with the rest of the system, the latter taking place by means of a minority of its nodes only. The various types of (pseudo-)communities are qualified and distinguished by a suitable set of indicators and, on a given network, they can be discovered by using a "local" searching algorithm. The application to a broad set of benchmark networks and real-world examples proves that the proposed approach is able to effectively disclose the different types of structures above defined and to usefully classify the directionality of their interactions with the rest of the system.
在分析复杂互联系统的重要类别时,如果需要对系统的结构和功能有一个精确且有效的描述,那么链路方向性几乎不能被忽视。如果进行社区分析,“社区”这一概念本身就会受到质疑,因为具有相对较松散外部连通性的属性可能仅指入站或出站链路,也可能指这两类链路。在本文中,我们引入了入社区、出社区和出入社区的概念,以便正确地对子网与系统其余部分交互的方向性进行分类。此外,我们通过引入入伪社区、出伪社区和出入伪社区的概念来扩展社区分析的范围。它们是具有强大内部连通性但也与系统其余部分有重要交互的子网,后者仅通过其少数节点进行。各种类型的(伪)社区通过一组合适的指标来界定和区分,并且在给定网络上,可以使用“局部”搜索算法来发现它们。对大量基准网络和实际例子的应用证明,所提出的方法能够有效地揭示上述定义的不同类型结构,并有效地对它们与系统其余部分交互的方向性进行分类。