Independent Component Analysis for Brain fMRI Does Indeed Select for Maximal Independence

Volume: 8, Issue: 8, Pages: e73309 - e73309
Published: Aug 29, 2013
Abstract
A recent paper by Daubechies et al. claims that two independent component analysis (ICA) algorithms, Infomax and FastICA, which are widely used for functional magnetic resonance imaging (fMRI) analysis, select for sparsity rather than independence. The argument was supported by a series of experiments on synthetic data. We show that these experiments fall short of proving this claim and that the ICA algorithms are indeed doing what they are...
Paper Details
Title
Independent Component Analysis for Brain fMRI Does Indeed Select for Maximal Independence
Published Date
Aug 29, 2013
Journal
Volume
8
Issue
8
Pages
e73309 - e73309
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