Publication | Open Access
Superfamily phenomena and motifs of networks induced from time series
478
Citations
21
References
2008
Year
EngineeringInteraction NetworkMolecular BiologyNetwork AnalysisHigh-dimensional ChaosRelative FrequencyNetwork DynamicDynamic NetworkNetwork EvolutionData ScienceBiological NetworkSocial Network AnalysisChaos TheoryDifferent SubgraphsBiologyPattern FormationNetwork ScienceGraph TheoryNatural SciencesComputational BiologyTemporal NetworkSystems Biology
We introduce a transformation from time series to complex networks and then study the relative frequency of different subgraphs within that network. The distribution of subgraphs can be used to distinguish between and to characterize different types of continuous dynamics: periodic, chaotic, and periodic with noise. Moreover, although the general types of dynamics generate networks belonging to the same superfamily of networks, specific dynamical systems generate characteristic dynamics. When applied to discrete (map-like) data this technique distinguishes chaotic maps, hyperchaotic maps, and noise data.
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