HIVE-COTE 2.0: a new meta ensemble for time series classification
HIVE-COTE 2.0: a new meta ensemble for time series classification
The Hierarchical Vote Collective of Transformation-based Ensembles (HIVE-COTE) is a heterogeneous meta ensemble for time series classification. HIVE-COTE forms its ensemble from classifiers of multiple domains, including phase-independent shapelets, bag-of-words based dictionaries and phase-dependent intervals. Since it was first proposed in 2016, the algorithm has remained state of the art for accuracy on the UCR time series classification archive. Over time it has been incrementally updated, culminating in its current state, HIVE-COTE 1.0. During this time a number of algorithms have been proposed which match the accuracy of HIVE-COTE. We propose comprehensive changes to the HIVE-COTE algorithm which significantly improve its accuracy and usability, presenting this upgrade as HIVE-COTE 2.0. We introduce two novel classifiers, the Temporal Dictionary Ensemble and Diverse Representation Canonical Interval Forest, which replace existing ensemble members. Additionally, we introduce the Arsenal, an ensemble of ROCKET classifiers as a new HIVE-COTE 2.0 constituent. We demonstrate that HIVE-COTE 2.0 is significantly more accurate on average than the current state of the art on 112 univariate UCR archive datasets and 26 multivariate UEA archive datasets.
3211-3243
Middlehurst, Matthew
44ae267d-b9ec-42b2-b818-d901b221daf9
Large, James
ebc9735e-259c-492d-946c-84bf78d4dbac
Flynn, Michael
c69bd971-7817-4b72-951f-0bc694a8ebaa
Lines, Jason
5d664e74-7313-445d-8099-cecb63157a2c
Bostrom, Aaron
d04f8fe8-cb9e-4ae7-ab2b-e5ee854d5275
Bagnall, Anthony
d31e6506-2a00-4358-ba3f-baefd48d59d8
1 December 2021
Middlehurst, Matthew
44ae267d-b9ec-42b2-b818-d901b221daf9
Large, James
ebc9735e-259c-492d-946c-84bf78d4dbac
Flynn, Michael
c69bd971-7817-4b72-951f-0bc694a8ebaa
Lines, Jason
5d664e74-7313-445d-8099-cecb63157a2c
Bostrom, Aaron
d04f8fe8-cb9e-4ae7-ab2b-e5ee854d5275
Bagnall, Anthony
d31e6506-2a00-4358-ba3f-baefd48d59d8
Middlehurst, Matthew, Large, James, Flynn, Michael, Lines, Jason, Bostrom, Aaron and Bagnall, Anthony
(2021)
HIVE-COTE 2.0: a new meta ensemble for time series classification.
Machine Learning, 110, .
(doi:10.1007/s10994-021-06057-9).
Abstract
The Hierarchical Vote Collective of Transformation-based Ensembles (HIVE-COTE) is a heterogeneous meta ensemble for time series classification. HIVE-COTE forms its ensemble from classifiers of multiple domains, including phase-independent shapelets, bag-of-words based dictionaries and phase-dependent intervals. Since it was first proposed in 2016, the algorithm has remained state of the art for accuracy on the UCR time series classification archive. Over time it has been incrementally updated, culminating in its current state, HIVE-COTE 1.0. During this time a number of algorithms have been proposed which match the accuracy of HIVE-COTE. We propose comprehensive changes to the HIVE-COTE algorithm which significantly improve its accuracy and usability, presenting this upgrade as HIVE-COTE 2.0. We introduce two novel classifiers, the Temporal Dictionary Ensemble and Diverse Representation Canonical Interval Forest, which replace existing ensemble members. Additionally, we introduce the Arsenal, an ensemble of ROCKET classifiers as a new HIVE-COTE 2.0 constituent. We demonstrate that HIVE-COTE 2.0 is significantly more accurate on average than the current state of the art on 112 univariate UCR archive datasets and 26 multivariate UEA archive datasets.
Text
s10994-021-06057-9
- Version of Record
More information
Accepted/In Press date: 29 July 2021
e-pub ahead of print date: 24 September 2021
Published date: 1 December 2021
Identifiers
Local EPrints ID: 495352
URI: http://eprints.soton.ac.uk/id/eprint/495352
PURE UUID: 6adc5989-ff5a-40c1-b7ce-1c8b36d6ac0c
Catalogue record
Date deposited: 11 Nov 2024 18:05
Last modified: 12 Nov 2024 03:14
Export record
Altmetrics
Contributors
Author:
Matthew Middlehurst
Author:
James Large
Author:
Michael Flynn
Author:
Jason Lines
Author:
Aaron Bostrom
Author:
Anthony Bagnall
Download statistics
Downloads from ePrints over the past year. Other digital versions may also be available to download e.g. from the publisher's website.
View more statistics