Date
Publisher
arXiv
Accurate prediction of student performance is essential for enabling timely
academic interventions. However, most machine learning models used in
educational settings are static and lack the ability to adapt when new data
such as post-intervention outcomes become available. To address this
limitation, we propose a Feedback-Driven Decision Support System (DSS) with a
closed-loop architecture that enables continuous model refinement. The system
employs a LightGBM-based regressor with incremental retraining, allowing
educators to input updated student performance data, which automatically
triggers model updates. This adaptive mechanism enhances prediction accuracy by
learning from real-world academic progress over time.
The platform features a Flask-based web interface to support real-time
interaction and integrates SHAP (SHapley Additive exPlanations) for model
interpretability, ensuring transparency and trustworthiness in predictions.
Experimental results demonstrate a 10.7% reduction in RMSE after retraining,
with consistent upward adjustments in predicted scores for students who
received interventions. By transforming static predictive models into
self-improving systems, our approach advances educational analytics toward
human-centered, data-driven, and responsive artificial intelligence. The
framework is designed for seamless integration into Learning Management Systems
(LMS) and institutional dashboards, facilitating practical deployment in real
educational environments.
What is the application?
Who is the user?
Why use AI?
Study design
