Abstract
The number of students enrolling in higher education institutions in South Africa has increased from the year 1994; however, many of these students get academically excluded. Machine learning techniques, along with statistical analysis and data mining, are one of the most important ways to study student performance and success. This paper aims at forecasting students second-year outcomes, to deduce if they are at risk of getting academically excluded or will proceed to register for the following academic year. This way, students who are at risk can be provided with support to avoid being academically excluded. Six predictive models, namely the K-nearest neighbours, random forest, decision trees, naive Bayes, logistic regression and multilayer perceptron, were trained. The random forest proved to be a good classification model amongst the others with an accuracy of 83%, precision of 83%, recall of 82% and an F1 score of 83%. The significance of this study is to promote student success initiatives in higher learning institutions to enhance throughput rates.
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Acknowledgements
This work is based on the research supported in part by the National Research Foundation of South Africa (Grant number: 121835).
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Kubayi, S.C., Jadhav, A., Ajoodha, R. (2023). A Machine Learning Approach for Predicting Students’ Second-Year Outcomes. In: Kumar, S., Hiranwal, S., Purohit, S.D., Prasad, M. (eds) Proceedings of International Conference on Communication and Computational Technologies . Algorithms for Intelligent Systems. Springer, Singapore. https://doi.org/10.1007/978-981-19-3951-8_41
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DOI: https://doi.org/10.1007/978-981-19-3951-8_41
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