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Extracting the Globally and Locally Adaptive Backbone of Complex Networks

机译:提取复杂网络的全局和局部自适应骨干

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摘要

A complex network is a useful tool for representing and analyzing complex systems, such as the world-wide web and transportation systems. However, the growing size of complex networks is becoming an obstacle to the understanding of the topological structure and their characteristics. In this study, a globally and locally adaptive network backbone (GLANB) extraction method is proposed. The GLANB method uses the involvement of links in shortest paths and a statistical hypothesis to evaluate the statistical importance of the links; then it extracts the backbone, based on the statistical importance, from the network by filtering the less important links and preserving the more important links; the result is an extracted subnetwork with fewer links and nodes. The GLANB determines the importance of the links by synthetically considering the topological structure, the weights of the links and the degrees of the nodes. The links that have a small weight but are important from the view of topological structure are not belittled. The GLANB method can be applied to all types of networks regardless of whether they are weighted or unweighted and regardless of whether they are directed or undirected. The experiments on four real networks show that the link importance distribution given by the GLANB method has a bimodal shape, which gives a robust classification of the links; moreover, the GLANB method tends to put the nodes that are identified as the core of the network by the k-shell algorithm into the backbone. This method can help us to understand the structure of the networks better, to determine what links are important for transferring information, and to express the network by a backbone easily.
机译:复杂的网络是表示和分析复杂系统(例如,万维网和运输系统)的有用工具。但是,复杂网络规模的增长正成为理解拓扑结构及其特征的障碍。在这项研究中,提出了一种全局和局部自适应网络骨干(GLANB)提取方法。 GLANB方法使用最短路径中的链接参与和统计假设来评估链接的统计重要性;然后,根据统计重要性,通过过滤不重要的链接并保留较重要的链接,从网络中提取骨干网;结果是提取的子网具有较少的链接和节点。 GLANB通过综合考虑拓扑结构,链接的权重和节点的程度来确定链接的重要性。具有轻量但从拓扑结构的角度来看很重要的链接不会被小视。 GLANB方法可以应用于所有类型的网络,而不管它们是加权还是未加权,也无论它们是定向还是非定向的。在四个真实网络上进行的实验表明,GLANB方法给出的链接重要性分布具有双峰形状,从而对链接进行了可靠的分类。此外,GLANB方法倾向于将被k-shell算法标识为网络核心的节点放入主干中。这种方法可以帮助我们更好地了解网络的结构,确定哪些链接对于传输信息很重要,并易于通过骨干网表示网络。

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