Group Inverse-Gamma Gamma Shrinkage for Sparse Linear Models with Block-Correlated Regressors

IF 4.9 2区 数学 Q1 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Bayesian Analysis Pub Date : 2021-02-21 DOI:10.1214/23-BA1371
Jonathan Boss, J. Datta, Xin Wang, S. Park, Jian Kang, B. Mukherjee
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Abstract

Heavy-tailed continuous shrinkage priors, such as the horseshoe prior, are widely used for sparse estimation problems. However, there is limited work extending these priors to predictors with grouping structures. Of particular interest in this article, is regression coefficient estimation where pockets of high collinearity in the covariate space are contained within known covariate groupings. To assuage variance inflation due to multicollinearity we propose the group inverse-gamma gamma (GIGG) prior, a heavy-tailed prior that can trade-off between local and group shrinkage in a data adaptive fashion. A special case of the GIGG prior is the group horseshoe prior, whose shrinkage profile is correlated within-group such that the regression coefficients marginally have exact horseshoe regularization. We show posterior consistency for regression coefficients in linear regression models and posterior concentration results for mean parameters in sparse normal means models. The full conditional distributions corresponding to GIGG regression can be derived in closed form, leading to straightforward posterior computation. We show that GIGG regression results in low mean-squared error across a wide range of correlation structures and within-group signal densities via simulation. We apply GIGG regression to data from the National Health and Nutrition Examination Survey for associating environmental exposures with liver functionality.
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具有块相关回归的稀疏线性模型的群逆伽玛-伽玛收缩
重尾连续收缩先验,如马蹄形先验,被广泛用于稀疏估计问题。然而,将这些先验扩展到具有分组结构的预测器的工作有限。本文特别感兴趣的是回归系数估计,其中协变量空间中的高共线性口袋包含在已知的协变量分组中。为了缓解多重共线性导致的方差膨胀,我们提出了群逆伽马-伽马(GIGG)先验,这是一种重尾先验,可以以数据自适应的方式在局部收缩和群收缩之间进行权衡。GIGG先验的一个特殊情况是群马蹄形先验,其收缩轮廓在群内相关,使得回归系数在一定程度上具有精确的马蹄形正则化。我们展示了线性回归模型中回归系数的后验一致性,以及稀疏正态均值模型中均值参数的后验集中结果。对应于GIGG回归的全条件分布可以以闭合形式导出,从而导致直接的后验计算。我们通过模拟表明,GIGG回归在广泛的相关结构和组内信号密度上产生了低均方误差。我们将GIGG回归应用于国家健康和营养检查调查的数据,以将环境暴露与肝功能联系起来。
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来源期刊
Bayesian Analysis
Bayesian Analysis 数学-数学跨学科应用
CiteScore
6.50
自引率
13.60%
发文量
59
审稿时长
>12 weeks
期刊介绍: Bayesian Analysis is an electronic journal of the International Society for Bayesian Analysis. It seeks to publish a wide range of articles that demonstrate or discuss Bayesian methods in some theoretical or applied context. The journal welcomes submissions involving presentation of new computational and statistical methods; critical reviews and discussions of existing approaches; historical perspectives; description of important scientific or policy application areas; case studies; and methods for experimental design, data collection, data sharing, or data mining. Evaluation of submissions is based on importance of content and effectiveness of communication. Discussion papers are typically chosen by the Editor in Chief, or suggested by an Editor, among the regular submissions. In addition, the Journal encourages individual authors to submit manuscripts for consideration as discussion papers.
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