Selecting Machine Learning Models for Student Performance Prediction Aligned with Pedagogical Objectives

Machine learning classifiers emerge as productive tools to develop prediction models which forecast the final outcome of the students, in a course, and provide an opportunity to the instructor to take appropriate measures. A single prediction model may not be enough to achieve all the objectives of...

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Main Authors: Khan I., Zabil M.H.M., Ahmad A.R., Jabeur N.
Other Authors: 58061521900
Format: Conference Paper
Published: Institute of Electrical and Electronics Engineers Inc. 2024
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Institution: Universiti Tenaga Nasional
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spelling my.uniten.dspace-344422024-10-14T11:19:49Z Selecting Machine Learning Models for Student Performance Prediction Aligned with Pedagogical Objectives Khan I. Zabil M.H.M. Ahmad A.R. Jabeur N. 58061521900 35185866500 35589598800 6505727698 Machine Learning Sensitivity Specificity Students' Performance Prediction Classification (of information) Forecasting Machine learning Learning classifiers Machine learning models Machine-learning Performance prediction Prediction modelling Sensitivity Specificity Student performance Student' performance prediction Training dataset Students Machine learning classifiers emerge as productive tools to develop prediction models which forecast the final outcome of the students, in a course, and provide an opportunity to the instructor to take appropriate measures. A single prediction model may not be enough to achieve all the objectives of an instructor. The selection of appropriate prediction models is yet a challenging task. This paper proposes a novel framework that applies a set of machine learning classifiers over the training dataset of a course. Along with the training dataset, the instructor clarifies the prime of objective of the binary model whether it must focus over the identification of fail, pass, or both students. The framework recommends a convenient model to achieve the specific objectives of the instructor. This research concludes that models inclined to reduce misclassification of minority class are suitable if the primary objective of the institution is the correct identification of students who are struggling to achieve the minimum course requirements. Further, a model specialized solely in amplifying the correct classification of majority class instance is appropriate if the aim is to focus on the correct identification of excellent students. The empirical analysis in this research leads towards the fact that accuracy alone is not an adequate metric to assess the performance of a model and that systematic selection of evaluation metrics is required to develop constructive models. � 2023 IEEE. Final 2024-10-14T03:19:49Z 2024-10-14T03:19:49Z 2023 Conference Paper 10.1109/ICOCO59262.2023.10398162 2-s2.0-85184849923 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85184849923&doi=10.1109%2fICOCO59262.2023.10398162&partnerID=40&md5=3c463b57c33ac8d09e40fe084bcc47ad https://irepository.uniten.edu.my/handle/123456789/34442 402 407 Institute of Electrical and Electronics Engineers Inc. Scopus
institution Universiti Tenaga Nasional
building UNITEN Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tenaga Nasional
content_source UNITEN Institutional Repository
url_provider http://dspace.uniten.edu.my/
topic Machine Learning
Sensitivity
Specificity
Students' Performance Prediction
Classification (of information)
Forecasting
Machine learning
Learning classifiers
Machine learning models
Machine-learning
Performance prediction
Prediction modelling
Sensitivity
Specificity
Student performance
Student' performance prediction
Training dataset
Students
spellingShingle Machine Learning
Sensitivity
Specificity
Students' Performance Prediction
Classification (of information)
Forecasting
Machine learning
Learning classifiers
Machine learning models
Machine-learning
Performance prediction
Prediction modelling
Sensitivity
Specificity
Student performance
Student' performance prediction
Training dataset
Students
Khan I.
Zabil M.H.M.
Ahmad A.R.
Jabeur N.
Selecting Machine Learning Models for Student Performance Prediction Aligned with Pedagogical Objectives
description Machine learning classifiers emerge as productive tools to develop prediction models which forecast the final outcome of the students, in a course, and provide an opportunity to the instructor to take appropriate measures. A single prediction model may not be enough to achieve all the objectives of an instructor. The selection of appropriate prediction models is yet a challenging task. This paper proposes a novel framework that applies a set of machine learning classifiers over the training dataset of a course. Along with the training dataset, the instructor clarifies the prime of objective of the binary model whether it must focus over the identification of fail, pass, or both students. The framework recommends a convenient model to achieve the specific objectives of the instructor. This research concludes that models inclined to reduce misclassification of minority class are suitable if the primary objective of the institution is the correct identification of students who are struggling to achieve the minimum course requirements. Further, a model specialized solely in amplifying the correct classification of majority class instance is appropriate if the aim is to focus on the correct identification of excellent students. The empirical analysis in this research leads towards the fact that accuracy alone is not an adequate metric to assess the performance of a model and that systematic selection of evaluation metrics is required to develop constructive models. � 2023 IEEE.
author2 58061521900
author_facet 58061521900
Khan I.
Zabil M.H.M.
Ahmad A.R.
Jabeur N.
format Conference Paper
author Khan I.
Zabil M.H.M.
Ahmad A.R.
Jabeur N.
author_sort Khan I.
title Selecting Machine Learning Models for Student Performance Prediction Aligned with Pedagogical Objectives
title_short Selecting Machine Learning Models for Student Performance Prediction Aligned with Pedagogical Objectives
title_full Selecting Machine Learning Models for Student Performance Prediction Aligned with Pedagogical Objectives
title_fullStr Selecting Machine Learning Models for Student Performance Prediction Aligned with Pedagogical Objectives
title_full_unstemmed Selecting Machine Learning Models for Student Performance Prediction Aligned with Pedagogical Objectives
title_sort selecting machine learning models for student performance prediction aligned with pedagogical objectives
publisher Institute of Electrical and Electronics Engineers Inc.
publishDate 2024
_version_ 1814061056261095424