Mixed-norm Regularization for Brain Decoding
Abstract
This work investigates the use of mixed-norm regularization for sensor selection in Event-Related Potential (ERP) based Brain-Computer Interfaces (BCI). The classification problem is cast as a discriminative optimization framework where sensor selection is induced through the use of mixed-norms. This framework is extended to the multi-task learning situation where several similar classification tasks related to different subjects are learned simultaneously. In this case, multi-task learning helps in leveraging data scarcity issue yielding to more robust classifiers. For this purpose, we have introduced a regularizer that induces both sensor selection and classifier similarities. The different regularization approaches are compared on three ERP datasets showing the interest of mixed-norm regularization in terms of sensor selection. The multi-task approaches are evaluated when a small number of learning examples are available yielding to significant performance improvements especially for subjects performing poorly.
Cite
@article{arxiv.1403.3628,
title = {Mixed-norm Regularization for Brain Decoding},
author = {Rémi Flamary and Nisrine Jrad and Ronald Phlypo and Marco Congedo and Alain Rakotomamonjy},
journal= {arXiv preprint arXiv:1403.3628},
year = {2014}
}
Comments
Computational and Mathematical Methods in Medicine (2014) http://www.hindawi.com/journals/cmmm/