Machine Learning-Driven Student Performance Prediction for Enhancing Tiered Instruction
Yawen Chen, Jiande Sun, Jinhui Wang, Liang Zhao, Xinmin Song, Linbo, Zhai

TL;DR
This paper presents a framework that integrates machine learning-based student performance prediction with tiered instruction to improve educational outcomes, emphasizing feature selection and tailored teaching strategies.
Contribution
It introduces a novel approach combining feature selection, machine learning prediction, and tiered instruction to enhance student performance in educational settings.
Findings
Random Forest achieved the best prediction accuracy.
Tiered instruction based on predictions improved student outcomes.
The framework was validated through control and experimental class comparisons.
Abstract
Student performance prediction is one of the most important subjects in educational data mining. As a modern technology, machine learning offers powerful capabilities in feature extraction and data modeling, providing essential support for diverse application scenarios, as evidenced by recent studies confirming its effectiveness in educational data mining. However, despite extensive prediction experiments, machine learning methods have not been effectively integrated into practical teaching strategies, hindering their application in modern education. In addition, massive features as input variables for machine learning algorithms often leads to information redundancy, which can negatively impact prediction accuracy. Therefore, how to effectively use machine learning methods to predict student performance and integrate the prediction results with actual teaching scenarios is a worthy…
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Taxonomy
TopicsOnline Learning and Analytics · Intelligent Tutoring Systems and Adaptive Learning
MethodsFeature Selection · Sparse Evolutionary Training
