Predictive Model For Student Dropout Rates Using Machine Learning Techniques
  • Author(s): Nwajiobi Kosiso Precious; Ridwan Kolapo; Muhammad Ibrahim Nurudeen; Dr. Temitope Olufunmi Atoyebi; Prema Kirubakaran
  • Paper ID: 1715880
  • Page: 216-220
  • Published Date: 03-04-2026
  • Published In: Iconic Research And Engineering Journals
  • Publisher: IRE Journals
  • e-ISSN: 2456-8880
  • Volume/Issue: Volume 9 Issue 10 April-2026
Abstract

Student dropout remains a persistent challenge in higher education, particularly in developing countries where institutional support systems are often limited. This study develops a machine learning based predictive model for early identification of students at risk of dropping out within Nigerian universities. A quantitative research design was adopted using institutional data comprising academic performance, demographic characteristics, and behavioural indicators. The dataset was pre-processed through cleaning, encoding, and feature selection, and subsequently divided into training and testing subsets.Multiple classification algorithms including Logistic Regression, Decision Tree, Random Forest, Support Vector Machine, and K-Nearest Neighbors were implemented and evaluated using standard performance metrics such as accuracy, precision, recall, F1-score, and ROC-AUC. The results indicate that ensemble and kernel-based methods outperform traditional linear models, achieving accuracy levels exceeding 80% while significantly improving recall in identifying at-risk students. Key predictors of dropout include academic performance trends, attendance patterns, and student engagement indicators. The findings demonstrate the effectiveness of machine learning techniques in enabling early detection of student attrition risk. The study recommends the integration of interpretable predictive models into institutional information systems to support timely intervention strategies. Furthermore, it highlights the need for robust data governance frameworks to ensure ethical and sustainable deployment of predictive analytics in higher education.

Keywords

Students, Predictive, Dropout.

Citations

IRE Journals:
Nwajiobi Kosiso Precious, Ridwan Kolapo, Muhammad Ibrahim Nurudeen, Dr. Temitope Olufunmi Atoyebi, Prema Kirubakaran "Predictive Model For Student Dropout Rates Using Machine Learning Techniques" Iconic Research And Engineering Journals Volume 9 Issue 10 2026 Page 216-220 https://doi.org/10.64388/IREV9I10-1715880

IEEE:
Nwajiobi Kosiso Precious, Ridwan Kolapo, Muhammad Ibrahim Nurudeen, Dr. Temitope Olufunmi Atoyebi, Prema Kirubakaran "Predictive Model For Student Dropout Rates Using Machine Learning Techniques" Iconic Research And Engineering Journals, 9(10) https://doi.org/10.64388/IREV9I10-1715880