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A Comprehensive Framework for Predicting Student Performance Using Machine Learning in Online Education

Johan Winsli G. FelixComputer Engineering Department - College of Engineering and Computer Studies, Pampanga State Agricultural University, PhilippinesFatima E. SupanCollege of Education, Pampanga State Agricultural University, PhilippinesFeruza Makhammatkosimovna KuchkarovaDepartment of Education, Kokand University, Uzbekistan
ABI

Аннотация

The rapid expansion of online education has created an urgent need for data-driven tools to predict student performance and enable proactive support. This paper presents a comprehensive machine learning framework designed to model and forecast academic outcomes using behavioral, cognitive, and social metrics. Validated on two large-scale datasets—the Open University Learning Analytics Dataset (OULAD) and Kalboard 360—our framework integrates a rigorous pipeline for data preprocessing, feature engineering, and model interpretation. We engineer novel quantitative features, including a Weekly Engagement Consistency Index (WECI) and an Assignment Timeliness Score (ATS), and evaluate multiple algorithms. The XGBoost model achieved superior performance with an AUC of 0.92 and an F1-Score of 0.88. Crucially, we integrate SHAP (SHapley Additive exPlanations) for model interpretability, revealing WECI and ATS as the most salient predictors. This work demonstrates that a systematic framework leveraging engineered features and ensemble methods can accurately identify at-risk students, providing a scalable solution for early intervention and personalized learning pathways in digital education.

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