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dc.contributor.authorToufik, Bazemlal-
dc.contributor.authorMessaoud, Mosbah-
dc.contributor.authorBOUCHEKOUF, Asma /encadreur-
dc.date.accessioned2026-01-26T20:12:43Z-
dc.date.available2026-01-26T20:12:43Z-
dc.date.issued2025-
dc.identifier.urihttps://dspace.univ-ghardaia.edu.dz/xmlui/handle/123456789/10438-
dc.description.abstractThe proliferation of digital learning platforms has generated vast amounts of student interaction data, creating opportunities to leverage machine learning for early predic- tion of student performance and timely intervention for at-risk learners. This thesis investigates the effectiveness of traditional machine learning algorithms (Random Forest, Logistic Regression, Decision Tree, KNN) versus sequential deep learning models (LSTM, GRU, RNN) in forecasting student outcomes, with particular focus on capturing temporal patterns in learning behaviors. The models were trained and evaluated on two real-world datasets: the UK OULAD Dataset and the Chinese TsinghuaX MOOC Dataset, using comprehensive performance metrics including accuracy, precision, recall, F1-score, and AUC-ROC across different course timeline stages. Results show that sequential models, especially GRU, outperform traditional meth- ods, achieving 93.09% accuracy on the OULAD dataset and 85.84% on the TsinghuaX dataset, particularly excelling in mid-course predictions. Temporal analysis highlights that predictive accuracy improves as more sequential data accumulates, emphasizing the value of temporal modeling in educational data mining. These findings demonstrate the effectiveness of deep learning methods in modeling sequential educational data. They also support the development of more accurate early warning systems and adaptive learning interventions, ultimately enhancing student re- tention and success in online education environments.EN_en
dc.publisheruniversity of GhardaïaEN_en
dc.subjectStudent performance prediction, Machine Learning, Deep Learning, Se- quential modeling, Educational Data Mining, Early warning system.EN_en
dc.titleValidating AI Predictions in Education: A Comparative Study of Methods and DatasetsEN_en
dc.typeThesisEN_en
Appears in Collections:Mémoires de Master

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