Decoding fMRI Data: A Comparison Between Support Vector Machines and Deep Neural Networks.

bioRxiv : the preprint server for biology(2023)

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摘要
We compared the performance and characteristics of SVM and CNN, two major methods in MVPA analysis of neuroimaging data, by applying them to the same two fMRI datasets.Both SVM and CNN achieved decoding accuracies above chance level for both datasets in the chosen ROIs and the CNN decoding accuracies were consistently higher than those of SVM.The heatmaps derived from SVM and CNN, which assess the contribution of voxels or brain regions to MVPA decoding performance, showed no significant overlap, providing evidence that the two methods depend on distinct brain activity patterns for decoding cognitive conditions.
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关键词
fmri data,support vector machines,deep neural networks
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