2024
DOI: 10.3390/math12070938
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Exploring the Entropy-Based Classification of Time Series Using Visibility Graphs from Chaotic Maps

J. Alberto Conejero,
Andrei Velichko,
Òscar Garibo-i-Orts
et al.

Abstract: The classification of time series using machine learning (ML) analysis and entropy-based features is an urgent task for the study of nonlinear signals in the fields of finance, biology and medicine, including EEG analysis and Brain–Computer Interfacing. As several entropy measures exist, the problem is assessing the effectiveness of entropies used as features for the ML classification of nonlinear dynamics of time series. We propose a method, called global efficiency (GEFMCC), for assessing the effectiveness o… Show more

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