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arxiv: 1203.3345 · v1 · pith:5DSNPF7Mnew · submitted 2012-03-15 · 🌊 nlin.CD

Power-laws in recurrence networks from dynamical systems

classification 🌊 nlin.CD
keywords systemsgammanetworksrecurrencedimensiondynamicalpower-lawsallowing
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Recurrence networks are a novel tool of nonlinear time series analysis allowing the characterisation of higher-order geometric properties of complex dynamical systems based on recurrences in phase space, which are a fundamental concept in classical mechanics. In this Letter, we demonstrate that recurrence networks obtained from various deterministic model systems as well as experimental data naturally display power-law degree distributions with scaling exponents $\gamma$ that can be derived exclusively from the systems' invariant densities. For one-dimensional maps, we show analytically that $\gamma$ is not related to the fractal dimension. For continuous systems, we find two distinct types of behaviour: power-laws with an exponent $\gamma$ depending on a suitable notion of local dimension, and such with fixed $\gamma=1$.

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