Title of article :
Fast Enhanced Exemplar-Based Clustering for Incomplete EEG Signals
Author/Authors :
Bi, Anqi School of Computer Science and Engineering - Changshu Institute of Technology - Changshu - Jiangsu, China , Ying, Wenhao School of Computer Science and Engineering - Changshu Institute of Technology - Changshu - Jiangsu, China , Zhao, Lu School of Computer Science and Engineering - Changshu Institute of Technology - Changshu - Jiangsu, China
Abstract :
*e diagnosis and treatment of epilepsy is a significant direction for both machine learning and brain science. *is paper newly
proposes a fast enhanced exemplar-based clustering (FEEC) method for incomplete EEG signal. *e algorithm first compresses
the potential exemplar list and reduces the pairwise similarity matrix. By processing the most complete data in the first stage, FEEC
then extends the few incomplete data into the exemplar list. A new compressed similarity matrix will be constructed and the scale
of this matrix is greatly reduced. Finally, FEEC optimizes the new target function by the enhanced α-expansion move method. On
the other hand, due to the pairwise relationship, FEEC also improves the generalization of this algorithm. In contrast to other
exemplar-based models, the performance of the proposed clustering algorithm is comprehensively verified by the experiments on
two datasets.
Keywords :
Clustering , EEG , Incomplete
Journal title :
Computational and Mathematical Methods in Medicine