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Bayesian Regularized Regression Based on Composite Quantile Method 被引量:1

Bayesian Regularized Regression Based on Composite Quantile Method
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摘要 Recently, variable selection based on penalized regression methods has received a great deal of attention, mostly through frequentist's models. This paper investigates regularization regression from Bayesian perspective. Our new method extends the Bayesian Lasso regression (Park and Casella, 2008) through replacing the least square loss and Lasso penalty by composite quantile loss function and adaptive Lasso penalty, which allows different penalization parameters for different regression coefficients. Based on the Bayesian hierarchical model framework, an efficient Gibbs sampler is derived to simulate the parameters from posterior distributions. Furthermore, we study the Bayesian composite quantile regression with adaptive group Lasso penalty. The distinguishing characteristic of the newly proposed method is completely data adaptive without requiring prior knowledge of the error distribution. Extensive simulations and two real data examples are used to examine the good performance of the proposed method. All results confirm that our novel method has both robustness and high efficiency and often outperforms other approaches. Recently, variable selection based on penalized regression methods has received a great deal of attention, mostly through frequentist's models. This paper investigates regularization regression from Bayesian perspective. Our new method extends the Bayesian Lasso regression (Park and Casella, 2008) through replacing the least square loss and Lasso penalty by composite quantile loss function and adaptive Lasso penalty, which allows different penalization parameters for different regression coefficients. Based on the Bayesian hierarchical model framework, an efficient Gibbs sampler is derived to simulate the parameters from posterior distributions. Furthermore, we study the Bayesian composite quantile regression with adaptive group Lasso penalty. The distinguishing characteristic of the newly proposed method is completely data adaptive without requiring prior knowledge of the error distribution. Extensive simulations and two real data examples are used to examine the good performance of the proposed method. All results confirm that our novel method has both robustness and high efficiency and often outperforms other approaches.
出处 《Acta Mathematicae Applicatae Sinica》 SCIE CSCD 2016年第2期495-512,共18页 应用数学学报(英文版)
基金 supported in part by National Natural Science Foundation of China(11501372,11571112) Project of National Social Science Fund(15BTJ027) Doctoral Fund of Ministry of Education of China(20130076110004) Program of Shanghai Subject Chief Scientist(14XD1401600) the 111 Project of China(B14019) Natural Science Fund of Nantong University(14B28)
关键词 composite quantile regression variable selection Lasso adaptive Lasso Gibbs sampler composite quantile regression variable selection Lasso adaptive Lasso, Gibbs sampler
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