Adaptive boost LS-SVM classification approach for time-series signal classification in epileptic seizure diagnosis applications
作者:
Highlights:
• Adaptive Boost Support Vector Machine (AB-LS-SVM) is designed to predict epilepsy.
• AB-LS-SVM classifier adopts covariance matrix to reduce EEG signal dimensionality.
• AB-LS-SVM classifier detects epileptic patterns with high classification accuracy.
• AB-LS-SVM classifier utilizes extracted EEG features to identify epilepsy.
• AB-LS-SVM classifier has practical implications in healthcare & expert systems.
摘要
•Adaptive Boost Support Vector Machine (AB-LS-SVM) is designed to predict epilepsy.•AB-LS-SVM classifier adopts covariance matrix to reduce EEG signal dimensionality.•AB-LS-SVM classifier detects epileptic patterns with high classification accuracy.•AB-LS-SVM classifier utilizes extracted EEG features to identify epilepsy.•AB-LS-SVM classifier has practical implications in healthcare & expert systems.
论文关键词:Epileptic seizure,Health informatics,Electroencephalogram,Covariance,Eigen values,Adaptive Boosting Least Square-Support Vector Machine,AB-LS-SVM
论文评审过程:Received 23 September 2019, Revised 27 May 2020, Accepted 16 June 2020, Available online 1 July 2020, Version of Record 8 July 2020.
论文官网地址:https://doi.org/10.1016/j.eswa.2020.113676