Traditional Bayesian quantile regression relies on the Asymmetric Laplace (AL) distribution due primarily to its satisfactory empirical and theoretical performances. However, the AL displays medium tails and it is not suitable for data characterized by strong deviations from the Gaussian hypothesis. An extension of the AL Bayesian quantile regression framework is proposed to account for fat tails using the Skew Exponential Power (SEP) distribution. Linear and Additive Models (AM) with penalized splines are considered to show the flexibility of the SEP in the Bayesian quantile regression context. Lasso priors are used in both cases to account for the problem of shrinking parameters when the parameters space becomes wide while Bayesian in...
The focus of this work is to develop a Bayesian framework to combine information from multiple parts...
A new technique based on Bayesian quantile regression that models the dependence of a quantile of on...
Quantile regression, as a supplement to the mean regression, is often used when a comprehensive rel...
Traditional Bayesian quantile regression relies on the Asymmetric Laplace Distribution (ALD) due pri...
This paper is a study of the application of Bayesian Exponentially Tilted Empirical Likelihood to in...
Quantile regression has recently received a great deal of attention in both theoretical and empirica...
In this thesis, methods are developed relating to the exponential power class of distributions. Pape...
Quantile regression provides a convenient framework for analyzing the impact of covariates on the co...
Traditional Bayesian quantile regression relies on the Asymmetric Laplace distribution (ALD) due pri...
The classical theory of linear models focuses on the conditional mean function, i.e. the function th...
Recent work by Schennach(2005) has opened the way to a Bayesian treat-ment of quantile regression. H...
Lp–quantiles generalise quantiles and expectiles to account for the whole distribution of the random...
We address a quantile dependent prior for Bayesian quantile regression. We extend the idea of the po...
Abstract: Quantile regression provides a convenient framework for analyzing the impact of covari-ate...
Bayesian inference can be extended to probability distributions defined in terms of their inverse di...
The focus of this work is to develop a Bayesian framework to combine information from multiple parts...
A new technique based on Bayesian quantile regression that models the dependence of a quantile of on...
Quantile regression, as a supplement to the mean regression, is often used when a comprehensive rel...
Traditional Bayesian quantile regression relies on the Asymmetric Laplace Distribution (ALD) due pri...
This paper is a study of the application of Bayesian Exponentially Tilted Empirical Likelihood to in...
Quantile regression has recently received a great deal of attention in both theoretical and empirica...
In this thesis, methods are developed relating to the exponential power class of distributions. Pape...
Quantile regression provides a convenient framework for analyzing the impact of covariates on the co...
Traditional Bayesian quantile regression relies on the Asymmetric Laplace distribution (ALD) due pri...
The classical theory of linear models focuses on the conditional mean function, i.e. the function th...
Recent work by Schennach(2005) has opened the way to a Bayesian treat-ment of quantile regression. H...
Lp–quantiles generalise quantiles and expectiles to account for the whole distribution of the random...
We address a quantile dependent prior for Bayesian quantile regression. We extend the idea of the po...
Abstract: Quantile regression provides a convenient framework for analyzing the impact of covari-ate...
Bayesian inference can be extended to probability distributions defined in terms of their inverse di...
The focus of this work is to develop a Bayesian framework to combine information from multiple parts...
A new technique based on Bayesian quantile regression that models the dependence of a quantile of on...
Quantile regression, as a supplement to the mean regression, is often used when a comprehensive rel...