Mitigating imbalanced classification problems in academic performance with resampling methods / A’zraa Afhzan Ab Rahim and Norlida Buniyamin

The imbalanced dataset is a common problem in the educational performance environment, where the number of students with poor performance is much less than those who perform well. This can create problems when predicting academic performance using machine learning algorithms, which assume that the d...

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Main Authors: Ab Rahim, A’zraa Afhzan, Buniyamin, Norlida
Format: Article
Language:English
Published: UiTM Press 2023
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Online Access:https://ir.uitm.edu.my/id/eprint/86029/1/86029.pdf
https://ir.uitm.edu.my/id/eprint/86029/
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spelling my.uitm.ir.860292023-10-29T11:36:32Z https://ir.uitm.edu.my/id/eprint/86029/ Mitigating imbalanced classification problems in academic performance with resampling methods / A’zraa Afhzan Ab Rahim and Norlida Buniyamin jeesr Ab Rahim, A’zraa Afhzan Buniyamin, Norlida Machine learning Evolutionary programming (Computer science). Genetic algorithms The imbalanced dataset is a common problem in the educational performance environment, where the number of students with poor performance is much less than those who perform well. This can create problems when predicting academic performance using machine learning algorithms, which assume that the datasets have a balanced distribution across all classes. We compared three resampling methods: SMOTE, Borderline SMOTE, and ADASYN, and used five different classifiers (Logistic Regression, Support Vector Machine, Naïve Bayes, KNearest Neighbor, and Decision Tree) on three imbalanced educational datasets. We used five-fold cross-validation to assess two performance indicators: accuracy and recall. Although accuracy indicates the overall performance, we focus more on recall values because it is more incumbent to identify poorperforming students so that necessary interventions can be executed promptly. Our results showed that when resampling improved recall values, ADASYN outperforms SMOTE and Borderline SMOTE consistently, better classifying the poorperforming students. Overall, our results suggest that resampling methods can be effective in addressing the problem of imbalanced classification in academic performance. However, the choice of resampling method should be carefully considered, as the performance of different methods can vary depending on the classifier used. UiTM Press 2023-10 Article PeerReviewed text en https://ir.uitm.edu.my/id/eprint/86029/1/86029.pdf Mitigating imbalanced classification problems in academic performance with resampling methods / A’zraa Afhzan Ab Rahim and Norlida Buniyamin. (2023) Journal of Electrical and Electronic Systems Research (JEESR) <https://ir.uitm.edu.my/view/publication/Journal_of_Electrical_and_Electronic_Systems_Research_=28JEESR=29/>, 23 (1): 6. pp. 45-56. ISSN 1985-5389
institution Universiti Teknologi Mara
building Tun Abdul Razak Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Mara
content_source UiTM Institutional Repository
url_provider http://ir.uitm.edu.my/
language English
topic Machine learning
Evolutionary programming (Computer science). Genetic algorithms
spellingShingle Machine learning
Evolutionary programming (Computer science). Genetic algorithms
Ab Rahim, A’zraa Afhzan
Buniyamin, Norlida
Mitigating imbalanced classification problems in academic performance with resampling methods / A’zraa Afhzan Ab Rahim and Norlida Buniyamin
description The imbalanced dataset is a common problem in the educational performance environment, where the number of students with poor performance is much less than those who perform well. This can create problems when predicting academic performance using machine learning algorithms, which assume that the datasets have a balanced distribution across all classes. We compared three resampling methods: SMOTE, Borderline SMOTE, and ADASYN, and used five different classifiers (Logistic Regression, Support Vector Machine, Naïve Bayes, KNearest Neighbor, and Decision Tree) on three imbalanced educational datasets. We used five-fold cross-validation to assess two performance indicators: accuracy and recall. Although accuracy indicates the overall performance, we focus more on recall values because it is more incumbent to identify poorperforming students so that necessary interventions can be executed promptly. Our results showed that when resampling improved recall values, ADASYN outperforms SMOTE and Borderline SMOTE consistently, better classifying the poorperforming students. Overall, our results suggest that resampling methods can be effective in addressing the problem of imbalanced classification in academic performance. However, the choice of resampling method should be carefully considered, as the performance of different methods can vary depending on the classifier used.
format Article
author Ab Rahim, A’zraa Afhzan
Buniyamin, Norlida
author_facet Ab Rahim, A’zraa Afhzan
Buniyamin, Norlida
author_sort Ab Rahim, A’zraa Afhzan
title Mitigating imbalanced classification problems in academic performance with resampling methods / A’zraa Afhzan Ab Rahim and Norlida Buniyamin
title_short Mitigating imbalanced classification problems in academic performance with resampling methods / A’zraa Afhzan Ab Rahim and Norlida Buniyamin
title_full Mitigating imbalanced classification problems in academic performance with resampling methods / A’zraa Afhzan Ab Rahim and Norlida Buniyamin
title_fullStr Mitigating imbalanced classification problems in academic performance with resampling methods / A’zraa Afhzan Ab Rahim and Norlida Buniyamin
title_full_unstemmed Mitigating imbalanced classification problems in academic performance with resampling methods / A’zraa Afhzan Ab Rahim and Norlida Buniyamin
title_sort mitigating imbalanced classification problems in academic performance with resampling methods / a’zraa afhzan ab rahim and norlida buniyamin
publisher UiTM Press
publishDate 2023
url https://ir.uitm.edu.my/id/eprint/86029/1/86029.pdf
https://ir.uitm.edu.my/id/eprint/86029/
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score 13.19449