Litcius/Paper detail

Characterizing dissimilarity of weighted networks

Yuanxiang Jiang, Meng Li, Ying Fan, Zengru Di

2021Scientific Reports21 citationsDOIOpen Access PDF

Abstract

Measuring the dissimilarities between networks is a basic problem and wildly used in many fields. Based on method of the D-measure which is suggested for unweighted networks, we propose a quantitative dissimilarity metric of weighted network (WD-metric). Crucially, we construct a distance probability matrix of weighted network, which can capture the comprehensive information of weighted network. Moreover, we define the complementary graph and alpha centrality of weighted network. Correspondingly, several synthetic and real-world networks are used to verify the effectiveness of the WD-metric. Experimental results show that WD-metric can effectively capture the influence of weight on the network structure and quantitatively measure the dissimilarity of weighted networks. It can also be used as a criterion for backbone extraction algorithms of complex network.

Topics & Concepts

Metric (unit)CentralityMeasure (data warehouse)Computer scienceWeighted networkDistance matrixConstruct (python library)GraphData miningNetwork analysisArtificial intelligenceMetricsComplex networkAlgorithmMathematicsTheoretical computer scienceStatisticsWorld Wide WebPhysicsStatic routingEconomicsRouting (electronic design automation)Programming languageComputer networkQuantum mechanicsRouting protocolOperations managementComplex Network Analysis TechniquesAdvanced Graph Neural NetworksBioinformatics and Genomic Networks