Explainable Bayesian Network Recommender for Personalized University Program Selection

Authors

  • Philippe Boribo Kikunda Université Catholique de Bukavu
  • Jérémie Ndikumagenge University of Burundi
  • Longin Ndayisaba University of Burundi
  • Thierry Nsabimana University of Burundi

DOI:

https://doi.org/10.62411/jcta.12720

Keywords:

Bayesian Network, Educational Data Mining, Hill Climbing Structure Learning, Personalized Recommendation, Probabilistic Graphical Model, Recommender System, Sensitivity Analysis

Abstract

In a context where students face increasingly complex academic choices, this work proposes a recommendation system based on Bayesian networks to guide new baccalaureate holders in their university choices. Using a dataset containing variables such as secondary school section, gender, type of school, percentage obtained, age, and first-year honors, we have constructed a probabilistic model capturing the dependencies between these characteristics and the option chosen. The data is collected at the Catholic University of Bukavu, the Official University of Bukavu, and the Higher Institute of Education of Bukavu, preprocessed and then used to learn the structure via the hill-climbing algorithm with the BIC score using R's bnlearn tool. The model enables us to estimate the probability that a candidate will choose a given stream, depending on their profile. The approach has been validated using metrics such as BIC, cross-validation, and bootstrap and offers a good compromise between interpretability and predictive performance. The results highlight the potential of Bayesian networks in constructing explainable recommendation systems in the field of academic guidance. The system produces orientation probability maps for each candidate, which can be used by enrollment service advisers, as well as an ordered list of options relevant to the candidate's profile. With a remarkable performance on a test sample of precision@k=0.85, recall@k=0.61, ndcg=0.8, and Map=0.88, it constitutes an effective lever for reducing the risk of being misdirected in universities in South-Kivu, in the Democratic Republic of Congo

Author Biographies

Philippe Boribo Kikunda, Université Catholique de Bukavu

Computer Science Department, Faculty of Sciences, Université Catholique de Bukavu (UCB); PO Box 285; Bukavu, Democratic Republic of the Congo Management Computer Department, Institut Supérieur Pédagogique de Bukavu (ISP/Bukavu), PO Box 854, Bukavu, Democratic Republic of the Congo

Jérémie Ndikumagenge, University of Burundi

Doctoral school of the University of Burundi, Center for Research in Infrastructure, Environment and Technology (CRIET), University of Burundi, Bujumbura, Burundi

Longin Ndayisaba, University of Burundi

Doctoral school of the University of Burundi, Center for Research in Infrastructure, Environment and Technology (CRIET), University of Burundi, Bujumbura, Burundi

Thierry Nsabimana, University of Burundi

Doctoral school of the University of Burundi, Center for Research in Infrastructure, Environment and Technology (CRIET), University of Burundi, Bujumbura, Burundi

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Published

2025-06-11

How to Cite

Kikunda, P. B., Ndikumagenge, J., Ndayisaba, L., & Nsabimana, T. . (2025). Explainable Bayesian Network Recommender for Personalized University Program Selection. Journal of Computing Theories and Applications, 3(1), 17–33. https://doi.org/10.62411/jcta.12720