Leveraging joint sparsity in hierarchical Bayesian learning
Machine Learning
2024-05-27 v2 Machine Learning
Numerical Analysis
Numerical Analysis
Abstract
We present a hierarchical Bayesian learning approach to infer jointly sparse parameter vectors from multiple measurement vectors. Our model uses separate conditionally Gaussian priors for each parameter vector and common gamma-distributed hyper-parameters to enforce joint sparsity. The resulting joint-sparsity-promoting priors are combined with existing Bayesian inference methods to generate a new family of algorithms. Our numerical experiments, which include a multi-coil magnetic resonance imaging application, demonstrate that our new approach consistently outperforms commonly used hierarchical Bayesian methods.
Cite
@article{arxiv.2303.16954,
title = {Leveraging joint sparsity in hierarchical Bayesian learning},
author = {Jan Glaubitz and Anne Gelb},
journal= {arXiv preprint arXiv:2303.16954},
year = {2024}
}
Comments
30 pages, 15 figures