Leveraging Joint Sparsity in Hierarchical Bayesian Learning

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Jan Glaubitz, Anne Gelb
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引用次数: 0

Abstract

SIAM/ASA Journal on Uncertainty Quantification, Volume 12, Issue 2, Page 442-472, June 2024.
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 hyperparameters 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 multicoil magnetic resonance imaging application, demonstrate that our new approach consistently outperforms commonly used hierarchical Bayesian methods.
利用层次贝叶斯学习中的联合稀疏性
SIAM/ASA 不确定性量化期刊》,第 12 卷,第 2 期,第 442-472 页,2024 年 6 月。 摘要:我们提出了一种分层贝叶斯学习方法,用于从多个测量向量中联合推断稀疏参数向量。我们的模型对每个参数向量使用单独的条件高斯前验,并使用共同的伽玛分布超参数来执行联合稀疏性。由此产生的联合稀疏性促进先验与现有的贝叶斯推理方法相结合,产生了一系列新算法。我们的数值实验(包括多线圈磁共振成像应用)表明,我们的新方法始终优于常用的分层贝叶斯方法。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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