4.7 Article

Toward automated extraction and characterization of scaling regions in dynamical systems

Journal

CHAOS
Volume 31, Issue 12, Pages -

Publisher

AIP Publishing
DOI: 10.1063/5.0069365

Keywords

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Funding

  1. National Science Foundation (NSF) [EAGER-1807478, AGS-2001670, DMS-1812481]
  2. Omidyar and Applied Complexity Fellowships at the Santa Fe Institute

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This paper introduces an automated technique for extracting and characterizing scaling regions on a graph, which can estimate the slope and extent of the scaling region by considering all possible combinations of end points and generating a distribution of slopes. The method is demonstrated for computations of dimension and Lyapunov exponent in dynamical systems, showing its usefulness in parameter selection for time-delay reconstructions.
Scaling regions-intervals on a graph where the dependent variable depends linearly on the independent variable-abound in dynamical systems, notably in calculations of invariants like the correlation dimension or a Lyapunov exponent. In these applications, scaling regions are generally selected by hand, a process that is subjective and often challenging due to noise, algorithmic effects, and confirmation bias. In this paper, we propose an automated technique for extracting and characterizing such regions. Starting with a two-dimensional plot-e.g., the values of the correlation integral, calculated using the Grassberger-Procaccia algorithm over a range of scales-we create an ensemble of intervals by considering all possible combinations of end points, generating a distribution of slopes from least squares fits weighted by the length of the fitting line and the inverse square of the fit error. The mode of this distribution gives an estimate of the slope of the scaling region (if it exists). The end points of the intervals that correspond to the mode provide an estimate for the extent of that region. When there is no scaling region, the distributions will be wide and the resulting error estimates for the slope will be large. We demonstrate this method for computations of dimension and Lyapunov exponent for several dynamical systems and show that it can be useful in selecting values for the parameters in time-delay reconstructions.(c) 2021 Author(s). All article content, except where otherwise noted, is licensed under a Creative Commons Attribution (CC BY) license(http://creativecommons.org/licenses/by/4.0/).

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