Shared Independent Component Analysis for Multi-Subject Neuroimaging
- URL: http://arxiv.org/abs/2110.13502v1
- Date: Tue, 26 Oct 2021 08:54:41 GMT
- Title: Shared Independent Component Analysis for Multi-Subject Neuroimaging
- Authors: Hugo Richard, Pierre Ablin, Bertrand Thirion, Alexandre Gramfort, Aapo
Hyv\"arinen
- Abstract summary: We introduce Shared Independent Component Analysis (ShICA) that models each view as a linear transform of shared independent components contaminated by additive Gaussian noise.
We show that this model is identifiable if the components are either non-Gaussian or have enough diversity in noise variances.
We provide empirical evidence on fMRI and MEG datasets that ShICA yields more accurate estimation of the components than alternatives.
- Score: 107.29179765643042
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We consider shared response modeling, a multi-view learning problem where one
wants to identify common components from multiple datasets or views. We
introduce Shared Independent Component Analysis (ShICA) that models each view
as a linear transform of shared independent components contaminated by additive
Gaussian noise. We show that this model is identifiable if the components are
either non-Gaussian or have enough diversity in noise variances. We then show
that in some cases multi-set canonical correlation analysis can recover the
correct unmixing matrices, but that even a small amount of sampling noise makes
Multiset CCA fail. To solve this problem, we propose to use joint
diagonalization after Multiset CCA, leading to a new approach called ShICA-J.
We show via simulations that ShICA-J leads to improved results while being very
fast to fit. While ShICA-J is based on second-order statistics, we further
propose to leverage non-Gaussianity of the components using a
maximum-likelihood method, ShICA-ML, that is both more accurate and more
costly. Further, ShICA comes with a principled method for shared components
estimation. Finally, we provide empirical evidence on fMRI and MEG datasets
that ShICA yields more accurate estimation of the components than alternatives.
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