稀疏贝叶斯学习模型的超参数估计

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2024-07-19 DOI:10.1137/24m162844x
Feng Yu, Lixin Shen, Guohui Song
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引用次数: 0

摘要

SIAM/ASA 不确定性量化期刊》,第 12 卷第 3 期,第 759-787 页,2024 年 9 月。 摘要.稀疏贝叶斯学习(SBL)模型被广泛应用于信号处理和机器学习中,通过分层先验来促进稀疏性。SBL 模型中的超参数对模型的性能至关重要,但由于相关目标函数的非凸性和高维性,超参数往往难以估计。本文为 SBL 模型中的超参数估计提出了一个综合框架,涵盖了众所周知的算法,如期望最大化算法、MacKay 算法和凸边界算法。这些算法在交替最小化和线性化(AML)范式中得到了内聚解释,并以其独特的线性化代用函数而与众不同。此外,还在 AML 框架内引入了一种新型算法,显示出更高的效率,尤其是在低信号噪声比的情况下。新的交替最小化和二次逼近范式(包括近端正则化项)进一步提高了效率。论文通过全面的收敛分析和数值实验证实了这些进步,证明了该算法在各种噪声条件和信噪比下的有效性。
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Hyperparameter Estimation for Sparse Bayesian Learning Models
SIAM/ASA Journal on Uncertainty Quantification, Volume 12, Issue 3, Page 759-787, September 2024.
Abstract.Sparse Bayesian learning (SBL) models are extensively used in signal processing and machine learning for promoting sparsity through hierarchical priors. The hyperparameters in SBL models are crucial for the model’s performance, but they are often difficult to estimate due to the nonconvexity and the high-dimensionality of the associated objective function. This paper presents a comprehensive framework for hyperparameter estimation in SBL models, encompassing well-known algorithms such as the expectation-maximization, MacKay, and convex bounding algorithms. These algorithms are cohesively interpreted within an alternating minimization and linearization (AML) paradigm, distinguished by their unique linearized surrogate functions. Additionally, a novel algorithm within the AML framework is introduced, showing enhanced efficiency, especially under low signal noise ratios. This is further improved by a new alternating minimization and quadratic approximation paradigm, which includes a proximal regularization term. The paper substantiates these advancements with thorough convergence analysis and numerical experiments, demonstrating the algorithm’s effectiveness in various noise conditions and signal-to-noise ratios.
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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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