A Flexible Empirical Bayes Approach to Multiple Linear Regression, and Connections with Penalized Regression

被引:0
|
作者
Kim, Youngseok [1 ]
Wang, Wei [1 ]
Carbonetto, Peter [2 ,3 ]
Stephens, Matthew [3 ,4 ]
机构
[1] Univ Chicago, Dept Stat, Chicago, IL 60637 USA
[2] Univ Chicago, Res Comp Ctr, Chicago, IL 60637 USA
[3] Univ Chicago, Dept Human Genet, Chicago, IL 60637 USA
[4] Univ Chicago, Dept Stat, Chicago, IL 60637 USA
关键词
Empirical Bayes; variational inference; normal means; penalized linear regression; nonconvex optimization; COORDINATE DESCENT ALGORITHMS; VARIABLE SELECTION; VARIATIONAL INFERENCE; MAXIMUM-LIKELIHOOD; SPARSE; LASSO; REGULARIZATION; CONVERGENCE; SHRINKAGE; OPTIMIZATION;
D O I
暂无
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
We introduce a new empirical Bayes approach for large-scale multiple linear regression. Our approach combines two key ideas: (i) the use of flexible "adaptive shrinkage" priors, which approximate the nonparametric family of scale mixture of normal distributions by a finite mixture of normal distributions; and (ii) the use of variational approximations to e ffi ciently estimate prior hyperparameters and compute approximate posteriors. Combining these two ideas results in fast and flexible methods, with computational speed comparable to fast penalized regression methods such as the Lasso, and with competitive prediction accuracy across a wide range of scenarios. Further, we provide new results that establish conceptual connections between our empirical Bayes methods and penalized methods. Specifically, we show that the posterior mean from our method solves a penalized regression problem, with the form of the penalty function being learned from the data by directly solving an optimization problem (rather than being tuned by cross -validation). Our methods are implemented in an R package, mr.ash.alpha , available from https://github.com/ stephenslab/mr.ash.alpha .
引用
收藏
页数:59
相关论文
共 50 条
  • [31] EMPIRICAL BAYES ORACLE UNCERTAINTY QUANTIFICATION FOR REGRESSION
    Belitser, Eduard
    Ghosal, Subhashis
    ANNALS OF STATISTICS, 2020, 48 (06): : 3113 - 3137
  • [32] ESTIMATIONS IN THE NORMAL REGRESSION EMPIRICAL BAYES MODEL
    LU, WS
    COMMUNICATIONS IN STATISTICS-THEORY AND METHODS, 1993, 22 (06) : 1773 - 1794
  • [33] An Approximated Collapsed Variational Bayes Approach to Variable Selection in Linear Regression
    You, Chong
    Ormerod, John T.
    Li, Xiangyang
    Pang, Cheng Heng
    Zhou, Xiao-Hua
    JOURNAL OF COMPUTATIONAL AND GRAPHICAL STATISTICS, 2023, 32 (03) : 782 - 792
  • [34] Penalized empirical likelihood for the sparse Cox regression model
    Wang, Dongliang
    Wu, Tong Tong
    Zhao, Yichuan
    JOURNAL OF STATISTICAL PLANNING AND INFERENCE, 2019, 201 : 71 - 85
  • [35] Hierarchically penalized quantile regression with multiple responses
    Kang, Jongkyeong
    Shin, Seung Jun
    Park, Jaeshin
    Bang, Sungwan
    JOURNAL OF THE KOREAN STATISTICAL SOCIETY, 2018, 47 (04) : 471 - 481
  • [36] Hierarchically penalized quantile regression with multiple responses
    Jongkyeong Kang
    Seung Jun Shin
    Jaeshin Park
    Sungwan Bang
    Journal of the Korean Statistical Society, 2018, 47 : 471 - 481
  • [37] Penalized regression with multiple sources of prior effects
    Rauschenberger, Armin
    Landoulsi, Zied
    van de Wiel, Mark A.
    Glaab, Enrico
    BIOINFORMATICS, 2023, 39 (12)
  • [38] Regression: multiple linear
    Bangdiwala, Shrikant I.
    INTERNATIONAL JOURNAL OF INJURY CONTROL AND SAFETY PROMOTION, 2018, 25 (02) : 232 - 236
  • [39] Multiple linear regression
    Martin Krzywinski
    Naomi Altman
    Nature Methods, 2015, 12 : 1103 - 1104
  • [40] Multiple linear regression
    Krzywinski, Martin
    Altman, Naomi
    NATURE METHODS, 2015, 12 (12) : 1103 - 1104