Node-weighted interacting network measures improve the representation of real-world complex systems

Many real-world complex systems are adequately represented by networks of interacting or interdependent networks. Additionally, it is often reasonable to take into account node weights such as surface area in climate networks, volume in brain networks, or economic capacity in trade networks to refle...

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Bibliographic Details
Published inEurophysics letters Vol. 102; no. 2; pp. 28007 - 28012
Main Authors Wiedermann, M., Donges, J. F., Heitzig, J., Kurths, J.
Format Journal Article
LanguageEnglish
Published EDP Sciences, IOP Publishing and Società Italiana di Fisica 01.04.2013
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Summary:Many real-world complex systems are adequately represented by networks of interacting or interdependent networks. Additionally, it is often reasonable to take into account node weights such as surface area in climate networks, volume in brain networks, or economic capacity in trade networks to reflect the varying size or importance of subsystems. Combining both ideas, we derive a novel class of statistical measures for analysing the structure of networks of interacting networks with heterogeneous node weights. Using a prototypical spatial network model, we show that the newly introduced node-weighted interacting network measures provide an improved representation of the underlying system's properties as compared to their unweighted analogues. We apply our method to study the complex network structure of cross-boundary trade between European Union (EU) and non-EU countries finding that it provides relevant information on trade balance and economic robustness.
Bibliography:publisher-ID:epl15394
ark:/67375/80W-XJF08GGF-Z
istex:E1D1AB94B91BC0DF1C8849435FC08C6D80759E6E
ISSN:0295-5075
1286-4854
1286-4854
DOI:10.1209/0295-5075/102/28007