Machine learning for physical motion identification using EEG signals: a comparative study of classifiers and hyperparameter tuning

Poh Foong Lee, Kah Yoon Chong

Journal of Ambient Intelligence and Humanized Computing(2024)

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摘要
This study addresses the crucial task of accurately classifying brainwave signals associated with distinct brain states, utilizing five supervised machine learning algorithms: K-Nearest Neighbors, Support Vector Machine, Decision Tree, Linear Discriminant Analysis, and Logistics Regression. The primary objectives encompass developing and optimizing these models, assessing the impact of hyperparameter tuning on performance through metrics like accuracy, consistency, and prediction time, and creating a user-friendly web-based deployment interface. The Decision Tree model emerges with the highest average accuracy score of 90.03
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关键词
Machine learning,EEG signals,Walking,Sitting,Clustering
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