Unsupervised feature based algorithms for time series extrinsic regression
Unsupervised feature based algorithms for time series extrinsic regression
Time Series Extrinsic Regression (TSER) involves using a set of training time series to form a predictive model of a continuous response variable that is not directly related to the regressor series. The TSER archive for comparing algorithms was released in 2022 with 19 problems. We increase the size of this archive to 63 problems and reproduce the previous comparison of baseline algorithms. We then extend the comparison to include a wider range of standard regressors and the latest versions of TSER models used in the previous study. We show that none of the previously evaluated regressors can outperform a regression adaptation of a standard classifier, rotation forest. We introduce two new TSER algorithms developed from related work in time series classification. FreshPRINCE is a pipeline estimator consisting of a transform into a wide range of summary features followed by a rotation forest regressor. DrCIF is a tree ensemble that creates features from summary statistics over random intervals. Our study demonstrates that both algorithms, along with InceptionTime, exhibit significantly better performance compared to the other 18 regressors tested. More importantly, DrCIF is the only one that significantly outperforms a standard rotation forest regressor.
2141-2185
Guijo-Rubio, David
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Middlehurst, Matthew
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Arcencio, Guilherme
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Silva, Diego Furtado
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Bagnall, Anthony
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July 2024
Guijo-Rubio, David
d1dcabcd-6baa-4181-a272-6b7dc54b8ecb
Middlehurst, Matthew
44ae267d-b9ec-42b2-b818-d901b221daf9
Arcencio, Guilherme
45896843-c0af-4184-b1c2-e0e0771790d4
Silva, Diego Furtado
17799f72-bdfa-48a5-bb35-f998e1298a56
Bagnall, Anthony
d31e6506-2a00-4358-ba3f-baefd48d59d8
Guijo-Rubio, David, Middlehurst, Matthew, Arcencio, Guilherme, Silva, Diego Furtado and Bagnall, Anthony
(2024)
Unsupervised feature based algorithms for time series extrinsic regression.
Data Mining and Knowledge Discovery, 38, .
(doi:10.1007/s10618-024-01027-w).
Abstract
Time Series Extrinsic Regression (TSER) involves using a set of training time series to form a predictive model of a continuous response variable that is not directly related to the regressor series. The TSER archive for comparing algorithms was released in 2022 with 19 problems. We increase the size of this archive to 63 problems and reproduce the previous comparison of baseline algorithms. We then extend the comparison to include a wider range of standard regressors and the latest versions of TSER models used in the previous study. We show that none of the previously evaluated regressors can outperform a regression adaptation of a standard classifier, rotation forest. We introduce two new TSER algorithms developed from related work in time series classification. FreshPRINCE is a pipeline estimator consisting of a transform into a wide range of summary features followed by a rotation forest regressor. DrCIF is a tree ensemble that creates features from summary statistics over random intervals. Our study demonstrates that both algorithms, along with InceptionTime, exhibit significantly better performance compared to the other 18 regressors tested. More importantly, DrCIF is the only one that significantly outperforms a standard rotation forest regressor.
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s10618-024-01027-w
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Accepted/In Press date: 17 April 2024
e-pub ahead of print date: 19 May 2024
Published date: July 2024
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Local EPrints ID: 503163
URI: http://eprints.soton.ac.uk/id/eprint/503163
ISSN: 1384-5810
PURE UUID: 75cd97c8-4c2b-41ae-9500-960dd189f152
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Date deposited: 23 Jul 2025 16:32
Last modified: 22 Aug 2025 02:41
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Author:
David Guijo-Rubio
Author:
Matthew Middlehurst
Author:
Guilherme Arcencio
Author:
Diego Furtado Silva
Author:
Anthony Bagnall
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