
Auto-Weighted Multi-View Discriminative Metric Learning Method With Fisher Discriminative and Global Structure Constraints for Epilepsy EEG Signal Classification
Author(s) -
Jing Xue,
Xiaoqing Gu,
Tongguang Ni
Publication year - 2020
Publication title -
frontiers in neuroscience
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.499
H-Index - 102
eISSN - 1662-4548
pISSN - 1662-453X
DOI - 10.3389/fnins.2020.586149
Subject(s) - discriminative model , pattern recognition (psychology) , artificial intelligence , metric (unit) , computer science , feature (linguistics) , constraint (computer aided design) , electroencephalography , feature vector , representation (politics) , machine learning , mathematics , psychology , operations management , linguistics , philosophy , geometry , psychiatry , politics , political science , law , economics
Metric learning is a class of efficient algorithms for EEG signal classification problem. Usually, metric learning method deals with EEG signals in the single view space. To exploit the diversity and complementariness of different feature representations, a new a uto-weighted m ulti-view d iscriminative m etric l earning method with Fisher discriminative and global structure constraints for epilepsy EEG signal classification called AMDML is proposed to promote the performance of EEG signal classification. On the one hand, AMDML exploits the multiple features of different views in the scheme of the multi-view feature representation. On the other hand, considering both the Fisher discriminative constraint and global structure constraint, AMDML learns the discriminative metric space, in which the intraclass EEG signals are compact and the interclass EEG signals are separable as much as possible. For better adjusting the weights of constraints and views, instead of manually adjusting, a closed form solution is proposed, which obtain the best values when achieving the optimal model. Experimental results on Bonn EEG dataset show AMDML achieves the satisfactory results.