Estimating fractal dimensions: A comparative review and open source implementations

2023 | journal article. A publication with affiliation to the University of Göttingen.

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​Estimating fractal dimensions: A comparative review and open source implementations​
Datseris, G.; Kottlarz, I.; Braun, A. P. & Parlitz, U.​ (2023) 
Chaos: An Interdisciplinary Journal of Nonlinear Science33(10) art. 102101​.​ DOI: https://doi.org/10.1063/5.0160394 

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Authors
Datseris, George; Kottlarz, Inga; Braun, Anton P.; Parlitz, Ulrich
Abstract
The fractal dimension is a central quantity in nonlinear dynamics and can be estimated via several different numerical techniques. In this review paper, we present a self-contained and comprehensive introduction to the fractal dimension. We collect and present various numerical estimators and focus on the three most promising ones: generalized entropy, correlation sum, and extreme value theory. We then perform an extensive quantitative evaluation of these estimators, comparing their performance and precision using different datasets and comparing the impact of features like length, noise, embedding dimension, and falsify-ability, among many others. Our analysis shows that for synthetic noiseless data, the correlation sum is the best estimator with extreme value theory following closely. For real experimental data, we found the correlation sum to be more strongly affected by noise vs the entropy and extreme value theory. The recent extreme value theory estimator seems powerful as it has some of the advantages of both alternative methods. However, using four different ways for checking for significance, we found that the method yielded “significant” low-dimensional results for inappropriate data like stock market timeseries. This fact, combined with some ambiguities we found in the literature of the method applications, has implications for both previous and future real-world applications using the extreme value theory approach, as, for example, the argument for small effective dimensionality in the data cannot come from the method itself. All algorithms discussed are implemented as performant and easy to use open source code via the DynamicalSystems.jl library.
Issue Date
2023
Journal
Chaos: An Interdisciplinary Journal of Nonlinear Science 
ISSN
1054-1500
eISSN
1089-7682
Language
English

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