Biological and Environmental Sciences and Engineering Division, King Abdullah University of Science and Technology (KAUST), Thuwal, Kingdom of Saudi Arabia.
Sci Rep. 2013;3:1613. doi: 10.1038/srep01613.
Growth and remodelling impact the network topology of complex systems, yet a general theory explaining how new links arise between existing nodes has been lacking, and little is known about the topological properties that facilitate link-prediction. Here we investigate the extent to which the connectivity evolution of a network might be predicted by mere topological features. We show how a link/community-based strategy triggers substantial prediction improvements because it accounts for the singular topology of several real networks organised in multiple local communities - a tendency here named local-community-paradigm (LCP). We observe that LCP networks are mainly formed by weak interactions and characterise heterogeneous and dynamic systems that use self-organisation as a major adaptation strategy. These systems seem designed for global delivery of information and processing via multiple local modules. Conversely, non-LCP networks have steady architectures formed by strong interactions, and seem designed for systems in which information/energy storage is crucial.
生长和重塑会影响复杂系统的网络拓扑结构,但缺乏解释新链接如何在现有节点之间产生的一般理论,也不太了解促进链接预测的拓扑性质。在这里,我们研究了仅通过拓扑特征来预测网络连接演变的程度。我们展示了基于链接/社区的策略如何通过考虑组织成多个本地社区的多个真实网络的奇异拓扑结构来触发重大的预测改进——在这里,我们将这种趋势命名为本地社区范式(LCP)。我们观察到,LCP 网络主要由弱相互作用组成,并具有异构和动态系统的特征,这些系统使用自组织作为主要的适应策略。这些系统似乎是为通过多个本地模块进行全球信息传递和处理而设计的。相反,非 LCP 网络具有由强相互作用形成的稳定架构,并且似乎是为那些信息/能量存储至关重要的系统而设计的。