Quantile regression models are a powerful tool for studying different points of the conditional distribution of univariate response variables. Their multivariate counterpart extension though is not straightforward, starting with the definition of multivariate quantiles. We propose here a flexible Bayesian quantile regression model when the response variable is multivariate, where we are able to define a structured additive framework for all predictor variables. We build on previous ideas considering a directional approach to define the quantiles of a response variable with multiple outputs, and we define noncrossing quantiles in every directional quantile model. We define a Markov chain Monte Carlo (MCMC) procedure for model estimation, whe...
In the present work we generalize the univariate M-quantile regression to the analysis of multivaria...
The classical theory of linear models focuses on the conditional mean function, i.e. the function th...
Quantile regression permits describing how quantiles of a scalar response vari- able depend on a se...
This paper presents a Bayesian approach to multiple-output quantile regression. The unconditional mo...
The goal of this thesis is to bridge the gap between univariate and multivariate quantiles by extend...
Quantile regression has recently received a great deal of attention in both theoretical and empirica...
Quantile regression, as a supplement to the mean regression, is often used when a comprehensive rel...
We describe a Bayesian model for simultaneous linear quantile regression at several specified quanti...
Multivariate quantiles have been defined by a number of researchers and can be estimated by differen...
Data integration has become more challenging with the emerging availability of multiple data sources...
The focus of this work is to develop a Bayesian framework to combine information from multiple parts...
An M-quantile regression model is developed for the analysis of multiple dependent outcomes by intro...
In this article, we consider the estimation problem of a tree model for multiple conditional quantil...
We develop a Bayesian method for nonparametric model–based quantile regression. The approach in-volv...
Motivated by the analysis of data from the UK Millennium Cohort Study on emotional and behavioural d...
In the present work we generalize the univariate M-quantile regression to the analysis of multivaria...
The classical theory of linear models focuses on the conditional mean function, i.e. the function th...
Quantile regression permits describing how quantiles of a scalar response vari- able depend on a se...
This paper presents a Bayesian approach to multiple-output quantile regression. The unconditional mo...
The goal of this thesis is to bridge the gap between univariate and multivariate quantiles by extend...
Quantile regression has recently received a great deal of attention in both theoretical and empirica...
Quantile regression, as a supplement to the mean regression, is often used when a comprehensive rel...
We describe a Bayesian model for simultaneous linear quantile regression at several specified quanti...
Multivariate quantiles have been defined by a number of researchers and can be estimated by differen...
Data integration has become more challenging with the emerging availability of multiple data sources...
The focus of this work is to develop a Bayesian framework to combine information from multiple parts...
An M-quantile regression model is developed for the analysis of multiple dependent outcomes by intro...
In this article, we consider the estimation problem of a tree model for multiple conditional quantil...
We develop a Bayesian method for nonparametric model–based quantile regression. The approach in-volv...
Motivated by the analysis of data from the UK Millennium Cohort Study on emotional and behavioural d...
In the present work we generalize the univariate M-quantile regression to the analysis of multivaria...
The classical theory of linear models focuses on the conditional mean function, i.e. the function th...
Quantile regression permits describing how quantiles of a scalar response vari- able depend on a se...