Assessing a Single Student's Concentration on Learning Platforms: A Machine Learning-Enhanced EEG-Based Framework
Zewen Zhuo, Mohamad Najafi, Hazem Zein, Amine Nait-Ali

TL;DR
This paper presents a machine learning-based EEG framework to accurately classify individual student concentration levels during online learning, enabling personalized educational insights with high accuracy.
Contribution
It introduces a personalized EEG data processing pipeline with feature selection and hyperparameter tuning, achieving high classification accuracy for student concentration states.
Findings
Achieved 97.6% accuracy in computer-based learning
Achieved 98% accuracy in virtual reality learning
Demonstrated effectiveness of personalized EEG analysis
Abstract
This study introduces a specialized pipeline designed to classify the concentration state of an individual student during online learning sessions by training a custom-tailored machine learning model. Detailed protocols for acquiring and preprocessing EEG data are outlined, along with the extraction of fifty statistical features from five EEG signal bands: alpha, beta, theta, delta, and gamma. Following feature extraction, a thorough feature selection process was conducted to optimize the data inputs for a personalized analysis. The study also explores the benefits of hyperparameter fine-tuning to enhance the classification accuracy of the student's concentration state. EEG signals were captured from the student using a Muse headband (Gen 2), equipped with five electrodes (TP9, AF7, AF8, TP10, and a reference electrode NZ), during engagement with educational content on computer-based…
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Taxonomy
MethodsFeature Selection
