An empirical evaluation of stacked ensembles with different meta-learners in imbalanced classification

The selection of a meta-learner determines the success of a stacked ensemble as the meta-learner is responsible for the final predictions of the stacked ensemble. Unfortunately, in imbalanced classification, selecting an appropriate and well-performing meta-learner of stacked ensemble is not straigh...

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Main Authors: Zian, Seng, Abdul Kareem, Sameem, Varathan, Kasturi Dewi
Format: Article
Published: Institute of Electrical and Electronics Engineers 2021
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Online Access:http://eprints.um.edu.my/27115/
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spelling my.um.eprints.271152022-04-08T04:42:24Z http://eprints.um.edu.my/27115/ An empirical evaluation of stacked ensembles with different meta-learners in imbalanced classification Zian, Seng Abdul Kareem, Sameem Varathan, Kasturi Dewi QA75 Electronic computers. Computer science TA Engineering (General). Civil engineering (General) TK Electrical engineering. Electronics Nuclear engineering The selection of a meta-learner determines the success of a stacked ensemble as the meta-learner is responsible for the final predictions of the stacked ensemble. Unfortunately, in imbalanced classification, selecting an appropriate and well-performing meta-learner of stacked ensemble is not straightforward as different meta-learners are advocated by different researchers. To investigate and identify a well-performing type of meta-learner in stacked ensemble for imbalanced classification, an experiment consisting of 19 meta-learners was conducted, detailed in this paper. Among the 19 meta-learners of stacked ensembles, a new weighted combination-based meta-learner that maximizes the H-measure during the training of stacked ensemble was first introduced and implemented in the empirical evaluation of this paper. The classification performances of stacked ensembles with 19 different meta-learners were recorded using both the area under the receiver operating characteristic curve (AUC) and H-measure (a metric that overcomes the deficiencies of the AUC). The weighted combination-based meta-learners of stacked ensembles have better classification performances on imbalanced datasets when compared to bagging-based, boosting-based, Decision Trees, Support Vector Machines, Naive Bayes, and Feedforward Neural Network meta-learners. Thus, the adoption of weighted combination-based meta-learners in stacked ensembles is recommended for their better performance on imbalanced datasets. Also, based on the empirical results, we identified better-performing meta-learners (such as the AUC maximizing meta-learner and the H-measure maximizing meta-learner) than the widely adopted meta-learner - Logistic Regression - in imbalanced classification. Institute of Electrical and Electronics Engineers 2021 Article PeerReviewed Zian, Seng and Abdul Kareem, Sameem and Varathan, Kasturi Dewi (2021) An empirical evaluation of stacked ensembles with different meta-learners in imbalanced classification. IEEE Access, 9. pp. 87434-87452. ISSN 2169-3536, DOI https://doi.org/10.1109/ACCESS.2021.3088414 <https://doi.org/10.1109/ACCESS.2021.3088414>. 10.1109/ACCESS.2021.3088414
institution Universiti Malaya
building UM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaya
content_source UM Research Repository
url_provider http://eprints.um.edu.my/
topic QA75 Electronic computers. Computer science
TA Engineering (General). Civil engineering (General)
TK Electrical engineering. Electronics Nuclear engineering
spellingShingle QA75 Electronic computers. Computer science
TA Engineering (General). Civil engineering (General)
TK Electrical engineering. Electronics Nuclear engineering
Zian, Seng
Abdul Kareem, Sameem
Varathan, Kasturi Dewi
An empirical evaluation of stacked ensembles with different meta-learners in imbalanced classification
description The selection of a meta-learner determines the success of a stacked ensemble as the meta-learner is responsible for the final predictions of the stacked ensemble. Unfortunately, in imbalanced classification, selecting an appropriate and well-performing meta-learner of stacked ensemble is not straightforward as different meta-learners are advocated by different researchers. To investigate and identify a well-performing type of meta-learner in stacked ensemble for imbalanced classification, an experiment consisting of 19 meta-learners was conducted, detailed in this paper. Among the 19 meta-learners of stacked ensembles, a new weighted combination-based meta-learner that maximizes the H-measure during the training of stacked ensemble was first introduced and implemented in the empirical evaluation of this paper. The classification performances of stacked ensembles with 19 different meta-learners were recorded using both the area under the receiver operating characteristic curve (AUC) and H-measure (a metric that overcomes the deficiencies of the AUC). The weighted combination-based meta-learners of stacked ensembles have better classification performances on imbalanced datasets when compared to bagging-based, boosting-based, Decision Trees, Support Vector Machines, Naive Bayes, and Feedforward Neural Network meta-learners. Thus, the adoption of weighted combination-based meta-learners in stacked ensembles is recommended for their better performance on imbalanced datasets. Also, based on the empirical results, we identified better-performing meta-learners (such as the AUC maximizing meta-learner and the H-measure maximizing meta-learner) than the widely adopted meta-learner - Logistic Regression - in imbalanced classification.
format Article
author Zian, Seng
Abdul Kareem, Sameem
Varathan, Kasturi Dewi
author_facet Zian, Seng
Abdul Kareem, Sameem
Varathan, Kasturi Dewi
author_sort Zian, Seng
title An empirical evaluation of stacked ensembles with different meta-learners in imbalanced classification
title_short An empirical evaluation of stacked ensembles with different meta-learners in imbalanced classification
title_full An empirical evaluation of stacked ensembles with different meta-learners in imbalanced classification
title_fullStr An empirical evaluation of stacked ensembles with different meta-learners in imbalanced classification
title_full_unstemmed An empirical evaluation of stacked ensembles with different meta-learners in imbalanced classification
title_sort empirical evaluation of stacked ensembles with different meta-learners in imbalanced classification
publisher Institute of Electrical and Electronics Engineers
publishDate 2021
url http://eprints.um.edu.my/27115/
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score 13.209306