Abstract
The advent of real-time fMRI pattern classification opens many avenues for interactive self-regulation where the brain's response is better modelled by multivariate, rather than univariate techniques. Here we test three on-line linear classifiers, applied to a real fMRI dataset, collected as part of an experiment on the cortical response to emotional stimuli. We propose a random subspace ensemble as a fast and more accurate alternative to component classifiers. The on-line linear discriminant classifier (O-LDC) was found to be a better base classifier than the on-line versions of the perceptron and the balanced winnow. © 2010 IEEE.
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CITATION STYLE
Plumpton, C. O., Kuncheva, L. I., Linden, D. E. J., & Johnston, S. J. (2010). On-line fMRI data classification using linear and ensemble classifiers. In Proceedings - International Conference on Pattern Recognition (pp. 4312–4315). https://doi.org/10.1109/ICPR.2010.1048
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