Convolutional- and deep learning-based techniques for time series ordinal classification
Convolutional- and deep learning-based techniques for time series ordinal classification
Time-series classification (TSC) covers the supervised learning problem where input data is provided in the form of series of values observed through repeated measurements over time, and whose objective is to predict the category to which they belong. When the class values are ordinal, classifiers that take this into account can perform better than nominal classifiers. Time-series ordinal classification (TSOC) is the field bridging this gap, yet unexplored in the literature. There are a wide range of time-series problems showing an ordered label structure, and TSC techniques that ignore the order relationship discard useful information. Hence, this article presents the first benchmarking of TSOC methodologies, exploiting the ordering of the target labels to boost the performance of current TSC state of the art. Both convolutional- and deep-learning-based methodologies (among the best performing alternatives for nominal TSC) are adapted for TSOC. For the experiments, a selection of 29 ordinal problems has been made. In this way, this article contributes to the establishment of the state of the art in TSOC. The results obtained by ordinal versions are found to be significantly better than current nominal TSC techniques in terms of ordinal performance metrics, outlining the importance of considering the ordering of the labels when dealing with this kind of problems.
537-549
Bagnall, Anthony
d31e6506-2a00-4358-ba3f-baefd48d59d8
27 November 2024
Bagnall, Anthony
d31e6506-2a00-4358-ba3f-baefd48d59d8
Bagnall, Anthony
,
Rafael Ayllón-Gavilán, David Guijo-Rubio, Pedro Antonio Gutiérrez and César Hervás-Martínez
(2024)
Convolutional- and deep learning-based techniques for time series ordinal classification.
IEEE Transactions on Cybernetics, 55 (2), .
(doi:10.1109/TCYB.2024.3498100).
Abstract
Time-series classification (TSC) covers the supervised learning problem where input data is provided in the form of series of values observed through repeated measurements over time, and whose objective is to predict the category to which they belong. When the class values are ordinal, classifiers that take this into account can perform better than nominal classifiers. Time-series ordinal classification (TSOC) is the field bridging this gap, yet unexplored in the literature. There are a wide range of time-series problems showing an ordered label structure, and TSC techniques that ignore the order relationship discard useful information. Hence, this article presents the first benchmarking of TSOC methodologies, exploiting the ordering of the target labels to boost the performance of current TSC state of the art. Both convolutional- and deep-learning-based methodologies (among the best performing alternatives for nominal TSC) are adapted for TSOC. For the experiments, a selection of 29 ordinal problems has been made. In this way, this article contributes to the establishment of the state of the art in TSOC. The results obtained by ordinal versions are found to be significantly better than current nominal TSC techniques in terms of ordinal performance metrics, outlining the importance of considering the ordering of the labels when dealing with this kind of problems.
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Convolutional-_and_Deep_Learning-Based_Techniques_for_Time_Series_Ordinal_Classification
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Accepted/In Press date: 12 November 2024
Published date: 27 November 2024
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Local EPrints ID: 498989
URI: http://eprints.soton.ac.uk/id/eprint/498989
ISSN: 2168-2267
PURE UUID: 9f29854d-3da7-430e-92e4-4514d48e1f06
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Date deposited: 06 Mar 2025 17:38
Last modified: 22 Aug 2025 02:40
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Author:
Anthony Bagnall
Corporate Author: Rafael Ayllón-Gavilán
Corporate Author: David Guijo-Rubio
Corporate Author: Pedro Antonio Gutiérrez
Corporate Author: César Hervás-Martínez
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