Adaptive multiclass classification for brain computer interfaces
Publication year
2014Source
Neural Computation, 26, 6, (2014), pp. 1108-27ISSN
Publication type
Article / Letter to editor
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Organization
Cognitive Neuroscience
Journal title
Neural Computation
Volume
vol. 26
Issue
iss. 6
Page start
p. 1108
Page end
p. 27
Subject
Radboudumc 0: Other Research DCMN: Donders Center for Medical NeuroscienceAbstract
We consider the problem of multiclass adaptive classification for brain-computer interfaces and propose the use of multiclass pooled mean linear discriminant analysis (MPMLDA), a multiclass generalization of the adaptation rule introduced by Vidaurre, Kawanabe, von Bunau, Blankertz, and Muller (2010) for the binary class setting. Using publicly available EEG data sets and tangent space mapping (Barachant, Bonnet, Congedo, & Jutten, 2012) as a feature extractor, we demonstrate that MPMLDA can significantly outperform state-of-the-art multiclass static and adaptive methods. Furthermore, efficient learning rates can be achieved using data from different subjects.
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- Academic publications [244084]
- Electronic publications [131085]
- Faculty of Medical Sciences [92872]
- Open Access publications [105126]
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