Empirical bayes formulation of the elastic net and mixed-norm models: application to the eeg inverse problem
Deirel Paz-Linares, Mayrim Vega-Hern\'andez, Pedro A. Rojas-L\'opez,, Pedro A. Vald\'es-Sosa, Eduardo Mart\'inez-Montes

TL;DR
This paper introduces a Bayesian approach combining Empirical Bayes and coordinate descent to improve EEG source localization using elastic net and mixed-norm models, outperforming traditional methods in accuracy and interpretability.
Contribution
It develops a novel Sparse Bayesian Learning algorithm for L1/L2 penalized models, enhancing source recovery and variable selection in EEG inverse problems.
Findings
More accurate source recovery in simulations
Robust variable selection compared to classical algorithms
More interpretable neurophysiological patterns in real data
Abstract
The estimation of EEG generating sources constitutes an Inverse Problem (IP) in Neuroscience. This is an ill-posed problem, due to the non-uniqueness of the solution, and many kinds of prior information have been used to constrain it. A combination of smoothness (L2 norm-based) and sparseness (L1 norm-based) constraints is a flexible approach that have been pursued by important examples such as the Elastic Net (ENET) and mixed-norm (MXN) models. The former is used to find solutions with a small number of smooth non-zero patches, while the latter imposes sparseness and smoothness simultaneously along different dimensions of the spatio-temporal matrix solutions. Both models have been addressed within the penalized regression approach, where the regularization parameters are selected heuristically, leading usually to non-optimal solutions. The existing Bayesian formulation of ENET allows…
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Taxonomy
TopicsBlind Source Separation Techniques · Neural dynamics and brain function · Gaussian Processes and Bayesian Inference
