IJITCS Vol. 18, No. 3, 8 Jun. 2026
Cover page and Table of Contents: PDF (size: 648KB)
PDF (648KB), PP.45-56
Views: 0 Downloads: 0
Machine Learning, Classification Models, Prediction, Students’ Academic performance, GHQ-12, Quadratic Discriminant Analysis, Random Forest, Extra Trees, Recommender System
Education is crucial for personal and economic growth, but financial challenges in developing countries hinder equitable academic success. NGOs administer scholarship programs to empower underprivileged individuals, a crucial step towards the attainment of Sustainable Development Goal 4, which aims to provide inclusive and equitable quality education for all. This study proposes a novel Scholarship Award Recommendation System that leverages predictive modelling and ensemble learning to identify deserving students for scholarship awards. The system utilizes a robust ensemble model that combines the strengths of Quadratic Discriminant Analysis (QDA), Random Forest (RF), and Extra Trees (ET) to predict students' academic performance. Additionally, we incorporate answers from the General Mental Health Questionnaire (GHQ-12). The GHQ-12 responses are pre-processed using a binary scoring approach (0-0-1-1) and integrated as predictive variables alongside academic and demographic features. We apply this framework to a case study of Nigerian university students in partnership with Springtime Development Foundation. The results indicate that incorporating GHQ-12 features significantly enhances prediction accuracy, with QDA, RF, and ET achieving accuracy scores of 0.90, 0.86, and 0.89, respectively. Statistical analysis using a t-test confirms the relevance of GHQ-12 features, with a p-value of 0.0013 establishing a significant correlation between student performance and mental health status. The study showed the effectiveness of the ensemble model to accurately predict students’ academic performance. It highlights the significance of incorporating variables from the (GHQ-12) into the predictive model, indicating mental health as a crucial factor for predicting academic performance which in turn enhances the performances of the Classification Models considered.
Bunmi Janet Bambi, Olusegun Lala, Akintoye Onamade, Oludayo Oduwole, Anozie Onyezewe, "Scholarship Award Recommendation System Using Predictive Modeling and Ensemble Learning", International Journal of Information Technology and Computer Science(IJITCS), Vol.18, No.3, pp.45-56, 2026. DOI:10.5815/ijitcs.2026.03.04
[1]J. Cantiello, M. D. Fottler, D. Oetjen and N. J. Zhang, "The impact of demographic and perceptual variables on a young adult’s decision to be covered by private health insurance," BMC Health Services Research, vol. 15, no. 1, pp. 1-15, 2015.
[2]S. C. Paik, "NGOs` Partnership for Social Development: A Case Study on an NGO," Dinkum Journal of Social Innovations, vol. 3, no. 2, pp. 115-123, 2024.
[3]W. Rodgers, G. Udo, Y. Zenad and D. Adekemi, "Ai Ethical Algorithmic Pathways Influencing Ngos Decisions," 10.2139/ssrn.4579225., 2023.
[4]D. Lewis, N. Kanji and N. S. Themudo, "Non-governmental organizations and development," Routledge, 2020.
[5]Y. Cai and L. Tang, "Correlation Analysis between Higher Education Level and College Students' Public Mental Health Driven by AI," Computational Intelligence and Neuroscience, 2022.
[6]R. Soobramoney and A. Singh, "Identifying Students At-Risk with an Ensemble of Machine Learning Algorithms," Conference on Information Communications Technology and Society (ICTAS), 2019.
[7]E. Alyahyan and D. Dusteaor, "Decision Trees for Very Early Prediction of Student's Achievement," IEEE Xplore: International Conference on Computer and Information Sciences (ICCIS), 2020.
[8]O. W. Adejo and T. Connolly, "Predicting student academic performance using multi-model heterogeneous ensemble approach," Journal of Applied Research in Higher Education, vol. 10, no. 1, p. 61–75, 2018.
[9]A. I. Adekitan and O. Salau, "The impact of engineering students’ performance in the first three years on their graduation result using educational data mining," Heliyon, vol. 5, no. 2, p. 1250, 2019.
[10]C. Zabriskie, J. Yang, S. DeVore and J. Stewart, "Using machine learning to predict physics course outcomes," Physical Review Physics Education Research, vol. 15, no. 2, 2019.
[11]H. Zeineddine, U. Braendle and A. Farah, "Enhancing prediction of student success: Automated machine learning approach," Computers and Electrical Engineering, p. 89, 2021.
[12]H. S. Y. Aybek and M. R. Okur, "Predicting achievement with artificial neural networks: The case of Anadolu University open education system," International Journal of Assessment Tools in Education, vol. 5, no. 3, pp. 474-490, 2018.
[13]X. Xu, J. Wang, H. Peng and R. Wu, "Prediction of academic performance associated with internet usage behaviors using machine learning algorithms," Computers in Human Behavior, vol. 98, pp. 166-173, 2019.
[14]H. Waheed, S. U. Hassan, N. R. Aljohani, J. Hardman, S. Alelyani and R. Nawaz, "Predicting academic performance of students from VLE big data using deep learning models," Computers in Human behavior, 2020.
[15]R. Asif, A. Merceron, S. Abbas and N. Ghani, "Analyzing undergraduate students’ performance using educational data mining," Comput. Educ., vol. 113, p. 177–194, 2017.
[16]S. Hussain and M. Q. Khan, "Student-performulator: Predicting students’ academic performance at secondary and intermediate level using machine learning," Annals of data science, vol. 10, no. 3, pp. 637-655, 2023.
[17]B. Albreiki, N. Zaki and H. Alashwal, "A systematic literature review of student’performance prediction using machine learning techniques," Education Sciences, vol. 11, no. 9, p. 552, 2021.
[18]S. G. Anjara, C. Bonetto, T. Van Bortel and C. Brayne, "Using the GHQ-12 to screen for mental health problems among primary care patients: psychometrics and practical considerations," International journal of mental health systems, vol. 14, pp. 1-13, 2020.