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| Publications [#275373] of Miguel A. Nicolelis
search PubMed.Papers Published
- Kim, S-P; Sanchez, JC; Erdogmus, D; Rao, YN; Wessberg, J; Principe, JC; Nicolelis, M (2003). Divide-and-conquer approach for brain machine interfaces: nonlinear mixture of competitive linear models.. Neural Networks : the Official Journal of the International Neural Network Society, 16(5-6), 865-871. [S0893-6080(03)00108-4], [doi]
(last updated on 2023/06/01)
Abstract: This paper proposes a divide-and-conquer strategy for designing brain machine interfaces. A nonlinear combination of competitively trained local linear models (experts) is used to identify the mapping from neuronal activity in cortical areas associated with arm movement to the hand position of a primate. The proposed architecture and the training algorithm are described in detail and numerical performance comparisons with alternative linear and nonlinear modeling approaches, including time-delay neural networks and recursive multilayer perceptrons, are presented. This new strategy allows training the local linear models using normalized LMS and using a relatively smaller nonlinear network to efficiently combine the predictions of the linear experts. This leads to savings in computational requirements, while the performance is still similar to a large fully nonlinear network.
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