Imbalanced Classification Methods for Student Grade Prediction: A Systematic Literature Review
Student success is essential for improving the higher education system student outcome. One way to measure student success is by predicting students' performance based on their prior academic grades. Concerning the significance of this area, various predictive models are widely developed and ap...
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my.uniten.dspace-347262024-10-14T11:22:06Z Imbalanced Classification Methods for Student Grade Prediction: A Systematic Literature Review Abdul Bujang S.D. Selamat A. Krejcar O. Mohamed F. Cheng L.K. Chiu P.C. Fujita H. 24467381700 24468984100 14719632500 55416008900 57188850203 36968467900 35611951900 education Imbalanced classification machine learning prediction model student grade prediction systematic literature review Classification (of information) Education computing Forecasting Learning systems Grade predictions High educations Imbalanced classification Machine-learning Prediction modelling Predictive models Student grade prediction Student success Students' grades Systematic literature review Students Student success is essential for improving the higher education system student outcome. One way to measure student success is by predicting students' performance based on their prior academic grades. Concerning the significance of this area, various predictive models are widely developed and applied to help the institution identify students at risk of failure. However, building a high-accuracy predictive model is challenging due to the dataset's imbalanced nature, which caused biased results. Therefore, this study aims to review the existing research article by providing a state-of-the-art approach for handling imbalanced classification in higher education, including the best practices of dataset characteristics, methods, and comparative analysis of the proposed algorithms, focusing on student grade prediction context problems. The study also presents the most common balancing methods published from 2015 to 2021 and highlights their impact on resolving imbalanced classification in three approaches: data-level, algorithm-level, and hybrid-level. The survey results reveal that the data-level approach using SMOTE oversampling is broadly applied in determining imbalanced problems for student grade prediction. However, the application of hybrid and feature selection methods supporting the generalization of the predictive model to boost student grade prediction performance is generally lacking. Other than that, some of the strengths and weaknesses of the proposed methods are discussed and summarized for the direction of future research. The outcomes of this review will guide the professionals, practitioners, and academic researchers in dealing with imbalanced classification, mainly in the higher education field. � 2013 IEEE. Final 2024-10-14T03:22:06Z 2024-10-14T03:22:06Z 2023 Review 10.1109/ACCESS.2022.3225404 2-s2.0-85144071000 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85144071000&doi=10.1109%2fACCESS.2022.3225404&partnerID=40&md5=67bf6048abdbb544d3d3f4a653579c5f https://irepository.uniten.edu.my/handle/123456789/34726 11 1970 1989 All Open Access Gold Open Access Institute of Electrical and Electronics Engineers Inc. Scopus |
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education Imbalanced classification machine learning prediction model student grade prediction systematic literature review Classification (of information) Education computing Forecasting Learning systems Grade predictions High educations Imbalanced classification Machine-learning Prediction modelling Predictive models Student grade prediction Student success Students' grades Systematic literature review Students |
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education Imbalanced classification machine learning prediction model student grade prediction systematic literature review Classification (of information) Education computing Forecasting Learning systems Grade predictions High educations Imbalanced classification Machine-learning Prediction modelling Predictive models Student grade prediction Student success Students' grades Systematic literature review Students Abdul Bujang S.D. Selamat A. Krejcar O. Mohamed F. Cheng L.K. Chiu P.C. Fujita H. Imbalanced Classification Methods for Student Grade Prediction: A Systematic Literature Review |
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Student success is essential for improving the higher education system student outcome. One way to measure student success is by predicting students' performance based on their prior academic grades. Concerning the significance of this area, various predictive models are widely developed and applied to help the institution identify students at risk of failure. However, building a high-accuracy predictive model is challenging due to the dataset's imbalanced nature, which caused biased results. Therefore, this study aims to review the existing research article by providing a state-of-the-art approach for handling imbalanced classification in higher education, including the best practices of dataset characteristics, methods, and comparative analysis of the proposed algorithms, focusing on student grade prediction context problems. The study also presents the most common balancing methods published from 2015 to 2021 and highlights their impact on resolving imbalanced classification in three approaches: data-level, algorithm-level, and hybrid-level. The survey results reveal that the data-level approach using SMOTE oversampling is broadly applied in determining imbalanced problems for student grade prediction. However, the application of hybrid and feature selection methods supporting the generalization of the predictive model to boost student grade prediction performance is generally lacking. Other than that, some of the strengths and weaknesses of the proposed methods are discussed and summarized for the direction of future research. The outcomes of this review will guide the professionals, practitioners, and academic researchers in dealing with imbalanced classification, mainly in the higher education field. � 2013 IEEE. |
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24467381700 |
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24467381700 Abdul Bujang S.D. Selamat A. Krejcar O. Mohamed F. Cheng L.K. Chiu P.C. Fujita H. |
format |
Review |
author |
Abdul Bujang S.D. Selamat A. Krejcar O. Mohamed F. Cheng L.K. Chiu P.C. Fujita H. |
author_sort |
Abdul Bujang S.D. |
title |
Imbalanced Classification Methods for Student Grade Prediction: A Systematic Literature Review |
title_short |
Imbalanced Classification Methods for Student Grade Prediction: A Systematic Literature Review |
title_full |
Imbalanced Classification Methods for Student Grade Prediction: A Systematic Literature Review |
title_fullStr |
Imbalanced Classification Methods for Student Grade Prediction: A Systematic Literature Review |
title_full_unstemmed |
Imbalanced Classification Methods for Student Grade Prediction: A Systematic Literature Review |
title_sort |
imbalanced classification methods for student grade prediction: a systematic literature review |
publisher |
Institute of Electrical and Electronics Engineers Inc. |
publishDate |
2024 |
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1814061068496928768 |
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13.214268 |