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A new topological entropy-based approach for measuring similarities among piecewise linear functions

 

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Opened Access A new topological entropy-based approach for measuring similarities among piecewise linear functions
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Author: Rucco, Matteo
González Díaz, Rocío
Jiménez Rodríguez, María José
Atienza Martínez, María Nieves
Cristalli, Cristina
Concettoni, Enrico
Ferrante, Andrea
Merelli, Emanuela
Department: Universidad de Sevilla. Departamento de Matemática Aplicada I (ETSII)
Date: 2017
Published in: Signal Processing, 134 (may 2017), 130-138.
Document type: Article
Abstract: In this paper we present a novel methodology based on a topological entropy, the so-called persistent entropy, for addressing the comparison between discrete piecewise linear functions. The comparison is certi ed by the stability theorem for persistent entropy. The theorem is used in the implementation of a new algorithm. The algorithm transforms a discrete piecewise linear function into a ltered simplicial complex that is analyzed with persistent homology and persistent entropy. Persistent entropy is used as discriminant feature for solving the supervised classi cation problem of real long length noisy signals of DC electrical motors. The quality of classi cation is stated in terms of the area under receiver operating characteristic curve (AUC=94.52%)
Cite: Rucco, M., González Díaz, R., Jiménez Rodríguez, M.J., Atienza Martínez, M.N., Cristalli, C., Concettoni, E.,...,Merelli, E. (2017). A new topological entropy-based approach for measuring similarities among piecewise linear functions. Signal Processing, 134 (may 2017), 130-138.
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URI: https://hdl.handle.net/11441/87688

DOI: 10.1016/j.sigpro.2016.12.006

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