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A hands-on introduction to time series classification and regression

A hands-on introduction to time series classification and regression
A hands-on introduction to time series classification and regression

Time series classification and regression are rapidly evolving fields that find areas of application in all domains of machine learning and data science. This hands on tutorial will provide an accessible overview of the recent research in these fields, using code examples to introduce the process of implementing and evaluating an estimator. We will show how to easily reproduce published results and how to compare a new algorithm to state-of-the-art. Finally, we will work through real world examples from the field of Electroencephalogram (EEG) classification and regression. EEG machine learning tasks arise in medicine, brain-computer interface research and psychology. We use these problems to how to compare algorithms on problems from a single domain and how to deal with data with different characteristics, such as missing values, unequal length and high dimensionality. The latest advances in the fields of time series classification and regression are all available through the aeon toolkit, an open source, scikit-learn compatible framework for time series machine learning which we use to provide our code examples.

classification, extrinsic regression, machine learning, time series
2154-817X
6410-6411
Bagnall, Anthony
d31e6506-2a00-4358-ba3f-baefd48d59d8
Middlehurst, Matthew
44ae267d-b9ec-42b2-b818-d901b221daf9
Forestier, Germain
7101361b-4409-4c09-970e-3f757451a4f3
Ismail-Fawaz, Ali
3814ceb3-f8fa-475e-955e-d477a28da875
Guillaume, Antoine
77f622b5-b790-499b-b0c9-c38be167129b
Guijo-Rubio, David
d1dcabcd-6baa-4181-a272-6b7dc54b8ecb
Tan, Chang Wei
3d8c08b1-a5a1-4de8-b42f-6dc4c3cae7c8
Dempster, Angus
7bdae1ce-88af-40eb-99a1-92c53af22da4
Webb, Geoffrey I.
596f1bba-34ac-4c85-bf11-2744f7184cfa
Bagnall, Anthony
d31e6506-2a00-4358-ba3f-baefd48d59d8
Middlehurst, Matthew
44ae267d-b9ec-42b2-b818-d901b221daf9
Forestier, Germain
7101361b-4409-4c09-970e-3f757451a4f3
Ismail-Fawaz, Ali
3814ceb3-f8fa-475e-955e-d477a28da875
Guillaume, Antoine
77f622b5-b790-499b-b0c9-c38be167129b
Guijo-Rubio, David
d1dcabcd-6baa-4181-a272-6b7dc54b8ecb
Tan, Chang Wei
3d8c08b1-a5a1-4de8-b42f-6dc4c3cae7c8
Dempster, Angus
7bdae1ce-88af-40eb-99a1-92c53af22da4
Webb, Geoffrey I.
596f1bba-34ac-4c85-bf11-2744f7184cfa

Bagnall, Anthony, Middlehurst, Matthew, Forestier, Germain, Ismail-Fawaz, Ali, Guillaume, Antoine, Guijo-Rubio, David, Tan, Chang Wei, Dempster, Angus and Webb, Geoffrey I. (2024) A hands-on introduction to time series classification and regression. In Proceedings of the 30th ACM SIGKDD Conference on Knowledge Discovery and Data Mining. pp. 6410-6411 . (doi:10.1145/3637528.3671443).

Record type: Conference or Workshop Item (Paper)

Abstract

Time series classification and regression are rapidly evolving fields that find areas of application in all domains of machine learning and data science. This hands on tutorial will provide an accessible overview of the recent research in these fields, using code examples to introduce the process of implementing and evaluating an estimator. We will show how to easily reproduce published results and how to compare a new algorithm to state-of-the-art. Finally, we will work through real world examples from the field of Electroencephalogram (EEG) classification and regression. EEG machine learning tasks arise in medicine, brain-computer interface research and psychology. We use these problems to how to compare algorithms on problems from a single domain and how to deal with data with different characteristics, such as missing values, unequal length and high dimensionality. The latest advances in the fields of time series classification and regression are all available through the aeon toolkit, an open source, scikit-learn compatible framework for time series machine learning which we use to provide our code examples.

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More information

Published date: 24 August 2024
Additional Information: Publisher Copyright: © 2024 Copyright held by the owner/author(s).
Keywords: classification, extrinsic regression, machine learning, time series

Identifiers

Local EPrints ID: 495992
URI: http://eprints.soton.ac.uk/id/eprint/495992
ISSN: 2154-817X
PURE UUID: 12ef9752-a26e-4e14-82f3-d463c95a7839
ORCID for Anthony Bagnall: ORCID iD orcid.org/0000-0003-2360-8994
ORCID for Matthew Middlehurst: ORCID iD orcid.org/0000-0002-3293-8779

Catalogue record

Date deposited: 28 Nov 2024 17:53
Last modified: 30 Nov 2024 03:14

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Contributors

Author: Anthony Bagnall ORCID iD
Author: Matthew Middlehurst ORCID iD
Author: Germain Forestier
Author: Ali Ismail-Fawaz
Author: Antoine Guillaume
Author: David Guijo-Rubio
Author: Chang Wei Tan
Author: Angus Dempster
Author: Geoffrey I. Webb

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