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Efficient Hierarchical Bayesian Inference for Spatio-temporal Regression Models in Neuroimaging

Authors :
Hashemi, Ali
Gao, Yijing
Cai, Chang
Ghosh, Sanjay
Müller, Klaus-Robert
Nagarajan, Srikantan S.
Haufe, Stefan
Publication Year :
2021

Abstract

Several problems in neuroimaging and beyond require inference on the parameters of multi-task sparse hierarchical regression models. Examples include M/EEG inverse problems, neural encoding models for task-based fMRI analyses, and climate science. In these domains, both the model parameters to be inferred and the measurement noise may exhibit a complex spatio-temporal structure. Existing work either neglects the temporal structure or leads to computationally demanding inference schemes. Overcoming these limitations, we devise a novel flexible hierarchical Bayesian framework within which the spatio-temporal dynamics of model parameters and noise are modeled to have Kronecker product covariance structure. Inference in our framework is based on majorization-minimization optimization and has guaranteed convergence properties. Our highly efficient algorithms exploit the intrinsic Riemannian geometry of temporal autocovariance matrices. For stationary dynamics described by Toeplitz matrices, the theory of circulant embeddings is employed. We prove convex bounding properties and derive update rules of the resulting algorithms. On both synthetic and real neural data from M/EEG, we demonstrate that our methods lead to improved performance.<br />Comment: Accepted to the 35th Conference on Neural Information Processing Systems (NeurIPS 2021)

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2111.01692
Document Type :
Working Paper