Recently, variable selection by penalized likelihood has attracted much research interest. In this paper, we propose adaptive Lasso quantile regression (BALQR) from a Bayesian perspective. The method extends the Bayesian Lasso quantile regression by allowing different penalization parameters for different regression coefficients. Inverse gamma prior distributions are placed on the penalty parameters. We treat the hyperparameters of the inverse gamma prior as unknowns and estimate them along with the other parameters. A Gibbs sampler is developed to simulate the parameters from the posterior distributions. Through simulation studies and analysis of a prostate cancer dataset, we compare the performance of the BALQR method proposed with six ex...
After its inception in Koenker and Bassett (1978), quantile regression has become an important and w...
We explore the use of proper priors for variance parameters of certain sparse Bayesian regression mo...
High-dimensional feature selection arises in many areas of modern sciences. For example, in genomic ...
Recently, variable selection by penalized likelihood has attracted much research interest. In this p...
In this paper, a Bayesian hierarchical model for variable selection and estimation in the context of...
In this paper, a Bayesian hierarchical model for variable selection and estimation in the context of...
The lasso (Tibshirani,1996) has sparked interest in the use of penalization of the log-likelihood f...
The scale mixture of normal mixing with Rayleigh as representation of Laplace prior of β has introd...
In this paper, Bayesian hierarchical model proposed to estimate the coefficients of the composite qu...
The t distribution is a useful extension of the normal distribution, which can be used for statistic...
Tobit Quantile Regression with Adaptive Lasso Penalty is a quantile regression model on censored dat...
Since lasso method launched, a lot of applications and extensions were run on it which made it to be...
Tobit Quantile Regression with Adaptive Lasso Penalty is a quantile regression model on censored dat...
Tobit Quantile Regression with Adaptive Lasso Penalty is a quantile regression model on censored dat...
After its inception in Koenker and Bassett (1978), quantile regression has become an important and w...
After its inception in Koenker and Bassett (1978), quantile regression has become an important and w...
We explore the use of proper priors for variance parameters of certain sparse Bayesian regression mo...
High-dimensional feature selection arises in many areas of modern sciences. For example, in genomic ...
Recently, variable selection by penalized likelihood has attracted much research interest. In this p...
In this paper, a Bayesian hierarchical model for variable selection and estimation in the context of...
In this paper, a Bayesian hierarchical model for variable selection and estimation in the context of...
The lasso (Tibshirani,1996) has sparked interest in the use of penalization of the log-likelihood f...
The scale mixture of normal mixing with Rayleigh as representation of Laplace prior of β has introd...
In this paper, Bayesian hierarchical model proposed to estimate the coefficients of the composite qu...
The t distribution is a useful extension of the normal distribution, which can be used for statistic...
Tobit Quantile Regression with Adaptive Lasso Penalty is a quantile regression model on censored dat...
Since lasso method launched, a lot of applications and extensions were run on it which made it to be...
Tobit Quantile Regression with Adaptive Lasso Penalty is a quantile regression model on censored dat...
Tobit Quantile Regression with Adaptive Lasso Penalty is a quantile regression model on censored dat...
After its inception in Koenker and Bassett (1978), quantile regression has become an important and w...
After its inception in Koenker and Bassett (1978), quantile regression has become an important and w...
We explore the use of proper priors for variance parameters of certain sparse Bayesian regression mo...
High-dimensional feature selection arises in many areas of modern sciences. For example, in genomic ...