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Spatial network surrogates for disentangling complex system structure from spatial embedding of nodes

机译:来自节点空间嵌入的解开复杂系统结构的空间网络替代品

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摘要

Networks with nodes embedded in a metric space have gained increasing interest in recent years. The effects of spatial embedding on the networks' structural characteristics, however, are rarely taken into account when studying their macroscopic properties. Here, we propose a hierarchy of null models to generate random surrogates from a given spatially embedded network that can preserve certain global and local statistics associated with the nodes' embedding in a metric space. Comparing the original network's and the resulting surrogates' global characteristics allows one to quantify to what extent these characteristics are already predetermined by the spatial embedding of the nodes and links. We apply our framework to various real-world spatial networks and show that the proposed models capture macroscopic properties of the networks under study much better than standard random network models that do not account for the nodes' spatial embedding. Depending on the actual performance of the proposed null models, the networks are categorized into different classes. Since many real-world complex networks are in fact spatial networks, the proposed approach is relevant for disentangling the underlying complex system structure from spatial embedding of nodes in many fields, ranging from social systems over infrastructure and neurophysiology to climatology.
机译:近年来,嵌入在公制空间中的节点的网络已经获得了越来越兴趣。然而,当研究其宏观性质时,很少考虑空间嵌入对网络结构特征的影响。在这里,我们提出了一个零模型的层次结构,以从给定的空间嵌入式网络生成随机代理,该网络可以保留与度量空间中的节点嵌入的节点相关联的某些全局和本地统计数据。比较原始网络和由此产生的代理的全局特征允许一个人量化这些特性已经通过节点和链路的空间嵌入预定了这些特性的程度。我们将框架应用于各种现实世界空间网络,并表明所提出的模型捕获研究的网络的宏观特性,而不是不考虑节点空间嵌入的标准随机网络模型。根据所提出的NULL模型的实际性能,网络分为不同类别。由于许多现实世界复杂的网络实际上是空间网络,所以提出的方法与解开底层复杂的系统结构,从许多领域中的节点的空间嵌入,从社会系统到基础设施和神经生理学到气候学。

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