Title of article :
EEG-Based Epilepsy Recognition via Multiple Kernel Learning
Author/Authors :
Yao, Yufeng Department of Computer Science and Engineering - Changshu Institute of Technology - Changshu, China , Ding, Yan Department of Computer Science and Engineering - Changshu Institute of Technology - Changshu, China , Zhong, Shan Department of Computer Science and Engineering - Changshu Institute of Technology - Changshu, China , Cui, Zhiming Suzhou University of Science and Technology - Suzhou, China
Abstract :
In the field of brain-computer interfaces, it is very common to use EEG signals for disease diagnosis. In this study, a style regularized
least squares support vector machine based on multikernel learning is proposed and applied to the recognition of epilepsy abnormal
signals. The algorithm uses the style conversion matrix to represent the style information contained in the sample, regularizes it in
the objective function, optimizes the objective function through the commonly used alternative optimization method, and
simultaneously updates the style conversion matrix and classifier during the iteration process parameter. In order to use the
learned style information in the prediction process, two new rules are added to the traditional prediction method, and the style
conversion matrix is used to standardize the sample style before classification.
Keywords :
EEG-Based , SVM , Multiple
Journal title :
Computational and Mathematical Methods in Medicine