Predicting Student Performance Using Data Mining and Learning Analytics Techniques: A Systematic Literature Review

The prediction of student academic performance has drawn considerable attention in education. However, although the learning outcomes are believed to improve learning and teaching, prognosticating the attainment of student outcomes remains underexplored. A decade of research work conducted between 2...

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Main Authors: Abdallah Namoun, Abdullah Alshanqiti
Format: Article
Language:English
Published: MDPI AG 2021-12-01
Series:Applied Sciences
Subjects:
Online Access:https://www.mdpi.com/2076-3417/11/1/237
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spelling doaj-f0a2e408f4934ec09c02bef45bf1ff0b2020-12-30T00:02:28ZengMDPI AGApplied Sciences2076-34172021-12-011123723710.3390/app11010237Predicting Student Performance Using Data Mining and Learning Analytics Techniques: A Systematic Literature ReviewAbdallah Namoun0Abdullah Alshanqiti1Faculty of Computer and Information Systems, Islamic University of Madinah, Madinah 42351, Saudi ArabiaFaculty of Computer and Information Systems, Islamic University of Madinah, Madinah 42351, Saudi ArabiaThe prediction of student academic performance has drawn considerable attention in education. However, although the learning outcomes are believed to improve learning and teaching, prognosticating the attainment of student outcomes remains underexplored. A decade of research work conducted between 2010 and November 2020 was surveyed to present a fundamental understanding of the intelligent techniques used for the prediction of student performance, where academic success is strictly measured using student learning outcomes. The electronic bibliographic databases searched include ACM, IEEE Xplore, Google Scholar, Science Direct, Scopus, Springer, and Web of Science. Eventually, we synthesized and analyzed a total of 62 relevant papers with a focus on three perspectives, (1) the forms in which the learning outcomes are predicted, (2) the predictive analytics models developed to forecast student learning, and (3) the dominant factors impacting student outcomes. The best practices for conducting systematic literature reviews, e.g., PICO and PRISMA, were applied to synthesize and report the main results. The attainment of learning outcomes was measured mainly as performance class standings (i.e., ranks) and achievement scores (i.e., grades). Regression and supervised machine learning models were frequently employed to classify student performance. Finally, student online learning activities, term assessment grades, and student academic emotions were the most evident predictors of learning outcomes. We conclude the survey by highlighting some major research challenges and suggesting a summary of significant recommendations to motivate future works in this field.https://www.mdpi.com/2076-3417/11/1/237performance predictionstudent learning outcomessystematic literature reviewacademic performancestudent successlearning analytics
collection DOAJ
language English
format Article
sources DOAJ
author Abdallah Namoun
Abdullah Alshanqiti
spellingShingle Abdallah Namoun
Abdullah Alshanqiti
Predicting Student Performance Using Data Mining and Learning Analytics Techniques: A Systematic Literature Review
Applied Sciences
performance prediction
student learning outcomes
systematic literature review
academic performance
student success
learning analytics
author_facet Abdallah Namoun
Abdullah Alshanqiti
author_sort Abdallah Namoun
title Predicting Student Performance Using Data Mining and Learning Analytics Techniques: A Systematic Literature Review
title_short Predicting Student Performance Using Data Mining and Learning Analytics Techniques: A Systematic Literature Review
title_full Predicting Student Performance Using Data Mining and Learning Analytics Techniques: A Systematic Literature Review
title_fullStr Predicting Student Performance Using Data Mining and Learning Analytics Techniques: A Systematic Literature Review
title_full_unstemmed Predicting Student Performance Using Data Mining and Learning Analytics Techniques: A Systematic Literature Review
title_sort predicting student performance using data mining and learning analytics techniques: a systematic literature review
publisher MDPI AG
series Applied Sciences
issn 2076-3417
publishDate 2021-12-01
description The prediction of student academic performance has drawn considerable attention in education. However, although the learning outcomes are believed to improve learning and teaching, prognosticating the attainment of student outcomes remains underexplored. A decade of research work conducted between 2010 and November 2020 was surveyed to present a fundamental understanding of the intelligent techniques used for the prediction of student performance, where academic success is strictly measured using student learning outcomes. The electronic bibliographic databases searched include ACM, IEEE Xplore, Google Scholar, Science Direct, Scopus, Springer, and Web of Science. Eventually, we synthesized and analyzed a total of 62 relevant papers with a focus on three perspectives, (1) the forms in which the learning outcomes are predicted, (2) the predictive analytics models developed to forecast student learning, and (3) the dominant factors impacting student outcomes. The best practices for conducting systematic literature reviews, e.g., PICO and PRISMA, were applied to synthesize and report the main results. The attainment of learning outcomes was measured mainly as performance class standings (i.e., ranks) and achievement scores (i.e., grades). Regression and supervised machine learning models were frequently employed to classify student performance. Finally, student online learning activities, term assessment grades, and student academic emotions were the most evident predictors of learning outcomes. We conclude the survey by highlighting some major research challenges and suggesting a summary of significant recommendations to motivate future works in this field.
topic performance prediction
student learning outcomes
systematic literature review
academic performance
student success
learning analytics
url https://www.mdpi.com/2076-3417/11/1/237
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