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Stepwise feature selection by cross-validation for EEG-based Brain Computer Interface
conference contribution
posted on 2023-06-07, 19:19 authored by K Tanaka, T Kurita, F Meyer, Luc BerthouzeLuc Berthouze, T KawabeThe potential of brain-computer interfaces (BCI) in serving a useful purpose, e.g., supporting communication in paralyzed patients, hinges on the quality of the classification of the brain waves. This paper proposes a novel method to construct a classifier with improved generalization performance. A feature selection method is applied to features calculated from the EEG signals so that unnecessary or redundant features can be removed and only effective features are left for the classification task. Kernel support vector machines (kernel SVM) were used as a classifier and the best combinations of features were searched by backward stepwise selection, i.e., by eliminating unnecessary features one by one, and by evaluating the resulting generalization performance through cross validation. Experiments showed that the generalization performance of the classifier constructed from the best set of features was higher than that of the classifier using all features.
History
Publication status
- Published
Journal
The 2006 IEEE International Joint Conference on Neural Network ProceedingsPublisher
IEEE PressExternal DOI
Page range
4672-4677Pages
6.0Event name
IEEE International Joint Conference on Neural NetworksEvent location
Vancouver, BCEvent type
conferenceEvent date
16-21 July 2006Book title
Neural Networks 2006. IJCNN '06 International Joint ConferenceISBN
0780394909Department affiliated with
- Informatics Publications
Full text available
- No
Peer reviewed?
- Yes