Joint Learning of Full-Structure Noise in Hierarchical Bayesian Regression Models

被引:4
|
作者
Hashemi, Ali [1 ,2 ]
Cai, Chang [3 ]
Gao, Yijing [3 ]
Ghosh, Sanjay [3 ]
Mueller, Klaus-Robert [4 ,5 ,6 ,7 ]
Nagarajan, Srikantan S. [3 ]
Haufe, Stefan [8 ,9 ,10 ]
机构
[1] Tech Univ Berlin, Fac Elect Engn & Comp Sci 4, Inst Software Engn & Theoret Comp Sci, Uncertainty Inverse Modeling & Machine Learning G, D-10587 Berlin, Germany
[2] Tech Univ Berlin, Fac Elect Engn & Comp Sci 4, Inst Software Engn & Theoret Comp Sci, Machine Learning Grp, D-10587 Berlin, Germany
[3] Univ Calif San Francisco, Dept Radiol & Biomed Imaging, San Francisco, CA 94143 USA
[4] Tech Univ Berlin, Machine Learning Grp, D-10587 Berlin, Germany
[5] BIFOLD Berlin Inst Fdn Learning & Data, D-10623 Berlin, Germany
[6] Korea Univ, Dept Artificial Intelligence, Seoul 02841, South Korea
[7] Max Planck Inst Informat, D-66123 Saarbrucken, Germany
[8] Tech Univ Berlin, Uncertainty Inverse Modeling & Machine Learning G, D-10587 Berlin, Germany
[9] Phys Tech Bundesanstalt Braunschweig & Berlin, D-10587 Berlin, Germany
[10] Charite Univ Med Berlin, Berlin Ctr Adv Neuroimaging, D-10117 Berlin, Germany
基金
欧洲研究理事会;
关键词
Bayes methods; Brain modeling; Covariance matrices; Inverse problems; Imaging; Manifolds; Gaussian noise; EEG/MEG brain source imaging; hierarchical Bayesian learning; majorization minimization; sparse Bayesian learning; type-II maximum-likelihood; ELECTROMAGNETIC TOMOGRAPHY; SOURCE RECONSTRUCTION; COVARIANCE ESTIMATION; ELECTRICAL-ACTIVITY; SOURCE LOCALIZATION; SPARSITY;
D O I
10.1109/TMI.2022.3224085
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
We consider the reconstruction of brain activity from electroencephalography (EEG). This inverse problem can be formulated as a linear regression with independent Gaussian scale mixture priors for both the source and noise components. Crucial factors influencing the accuracy of the source estimation are not only the noise level but also its correlation structure, but existing approaches have not addressed the estimation of noise covariance matrices with full structure. To address this shortcoming, we develop hierarchical Bayesian (type-II maximum likelihood) models for observations with latent variables for source and noise, which are estimated jointly from data. As an extension to classical sparse Bayesian learning (SBL), where across-sensor observations are assumed to be independent and identically distributed, we consider Gaussian noise with full covariance structure. Using the majorization-maximization framework and Riemannian geometry, we derive an efficient algorithm for updating the noise covariance along the manifold of positive definite matrices. We demonstrate that our algorithm has guaranteed and fast convergence and validate it in simulations and with real MEG data. Our results demonstrate that the novel framework significantly improves upon state-of-the-art techniques in the real-world scenario where the noise is indeed non-diagonal and full-structured. Our method has applications in many domains beyond biomagnetic inverse problems.
引用
收藏
页码:610 / 624
页数:15
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