Regularized Bayesian quantile regression

被引:6
作者
El Adlouni, Salaheddine [1 ]
Salaou, Garba [1 ]
St-Hilaire, Andre [2 ]
机构
[1] Univ Moncton, Math & Stat Dept, 18 Antonine Maillet Ave, Moncton, NB E1A 3E9, Canada
[2] INRS ETE, Ctr Eau Terre Environm, Quebec City, PQ, Canada
基金
加拿大自然科学与工程研究理事会;
关键词
Asymmetric Laplace distribution; Bayesian inference; B-splines Lasso; Quantile regression; Ridge; SCAD; VARIABLE SELECTION; ADAPTIVE LASSO; MODELS; SHRINKAGE;
D O I
10.1080/03610918.2017.1280830
中图分类号
O21 [概率论与数理统计]; C8 [统计学];
学科分类号
020208 ; 070103 ; 0714 ;
摘要
A number of nonstationary models have been developed to estimate extreme events as function of covariates. A quantile regression (QR) model is a statistical approach intended to estimate and conduct inference about the conditional quantile functions. In this article, we focus on the simultaneous variable selection and parameter estimation through penalized quantile regression. We conducted a comparison of regularized Quantile Regression model with B-Splines in Bayesian framework. Regularization is based on penalty and aims to favor parsimonious model, especially in the case of large dimension space. The prior distributions related to the penalties are detailed. Five penalties (Lasso, Ridge, SCAD0, SCAD1 and SCAD2) are considered with their equivalent expressions in Bayesian framework. The regularized quantile estimates are then compared to the maximum likelihood estimates with respect to the sample size. A Markov Chain Monte Carlo (MCMC) algorithms are developed for each hierarchical model to simulate the conditional posterior distribution of the quantiles. Results indicate that the SCAD0 and Lasso have the best performance for quantile estimation according to Relative Mean Biais (RMB) and the Relative Mean-Error (RME) criteria, especially in the case of heavy distributed errors. A case study of the annual maximum precipitation at Charlo, Eastern Canada, with the Pacific North Atlantic climate index as covariate is presented.
引用
收藏
页码:277 / 293
页数:17
相关论文
共 23 条
  • [1] Model selection in quantile regression models
    Alhamzawi, Rahim
    [J]. JOURNAL OF APPLIED STATISTICS, 2015, 42 (02) : 445 - 458
  • [2] Bayesian adaptive Lasso quantile regression
    Alhamzawi, Rahim
    Yu, Keming
    Benoit, Dries F.
    [J]. STATISTICAL MODELLING, 2012, 12 (03) : 279 - 297
  • [3] [Anonymous], 2008, J AM STAT ASS
  • [4] [Anonymous], TECHNICAL REPORT
  • [5] Simultaneous regression shrinkage, variable selection, and supervised clustering of predictors with OSCAR
    Bondell, Howard D.
    Reich, Brian J.
    [J]. BIOMETRICS, 2008, 64 (01) : 115 - 123
  • [6] Cade BS, 2003, FRONT ECOL ENVIRON, V1, P412, DOI 10.1890/1540-9295(2003)001[0412:AGITQR]2.0.CO
  • [7] 2
  • [8] Comparison of methodologies to assess the convergence of Markov chain Monte Carlo methods
    El Adlouni, Salaheddine
    Favre, Anne-Catherine
    Bobee, Bernard
    [J]. COMPUTATIONAL STATISTICS & DATA ANALYSIS, 2006, 50 (10) : 2685 - 2701
  • [9] CAViaR: Conditional autoregressive value at risk by regression quantiles
    Engle, RF
    Manganelli, S
    [J]. JOURNAL OF BUSINESS & ECONOMIC STATISTICS, 2004, 22 (04) : 367 - 381
  • [10] Bayesian regularisation in structured additive regression: a unifying perspective on shrinkage, smoothing and predictor selection
    Fahrmeir, Ludwig
    Kneib, Thomas
    Konrath, Susanne
    [J]. STATISTICS AND COMPUTING, 2010, 20 (02) : 203 - 219