Multivariate quantiles have been defined by a number of researchers and can be estimated by different methods. However, little work can be found in the literature about Bayesian estimation of joint quantiles of multivariate random variables. In this paper we present a multivariate quantile function model and propose a Bayesian method to estimate the model parameters. The methodology developed here enables us to estimate the multivariate quantile surfaces and the joint probability without direct use of the joint probability distribution or density functions of the random variables of interest. Furthermore, simulation studies and applications of the methodology to bivariate economics data sets show that the method works well both theoreticall...
An M-quantile regression model is developed for the analysis of multiple dependent outcomes by intro...
This paper proposes a Bayesian approach to quantile autoregressive (QAR) time series model estimatio...
The joint asymptotic distributions of the marginal quantiles and quantile functions in samples from ...
In this paper, we present new multivariate quantile distributions and utilise likelihood-free Bayesi...
The goal of this thesis is to bridge the gap between univariate and multivariate quantiles by extend...
Quantile regression models are a powerful tool for studying different points of the conditional dist...
We propose a high-dimensional copula to model the dependence structure of the seemingly unrelated qu...
Use of Bayesian modelling and analysis has become commonplace in many disciplines (finance, genetics...
The classical theory of linear models focuses on the conditional mean function, i.e. the function th...
We introduce a nonparametric quantile predictor for multivariate time series via generalizing the we...
<p>In spite of the recent surge of interest in quantile regression, joint estimation of linear quant...
We consider jointly modeling a finite collection of quantiles over time. Formal Bayesian inference o...
This paper proposes a maximum likelihood approach to jointly estimate marginal conditional quantiles...
We introduce a Bayesian semiparametric methodology for joint quantile regression with linearity and ...
This paper develops a Mixed Hidden Markov Model for joint estimation of multiple quantiles in a mult...
An M-quantile regression model is developed for the analysis of multiple dependent outcomes by intro...
This paper proposes a Bayesian approach to quantile autoregressive (QAR) time series model estimatio...
The joint asymptotic distributions of the marginal quantiles and quantile functions in samples from ...
In this paper, we present new multivariate quantile distributions and utilise likelihood-free Bayesi...
The goal of this thesis is to bridge the gap between univariate and multivariate quantiles by extend...
Quantile regression models are a powerful tool for studying different points of the conditional dist...
We propose a high-dimensional copula to model the dependence structure of the seemingly unrelated qu...
Use of Bayesian modelling and analysis has become commonplace in many disciplines (finance, genetics...
The classical theory of linear models focuses on the conditional mean function, i.e. the function th...
We introduce a nonparametric quantile predictor for multivariate time series via generalizing the we...
<p>In spite of the recent surge of interest in quantile regression, joint estimation of linear quant...
We consider jointly modeling a finite collection of quantiles over time. Formal Bayesian inference o...
This paper proposes a maximum likelihood approach to jointly estimate marginal conditional quantiles...
We introduce a Bayesian semiparametric methodology for joint quantile regression with linearity and ...
This paper develops a Mixed Hidden Markov Model for joint estimation of multiple quantiles in a mult...
An M-quantile regression model is developed for the analysis of multiple dependent outcomes by intro...
This paper proposes a Bayesian approach to quantile autoregressive (QAR) time series model estimatio...
The joint asymptotic distributions of the marginal quantiles and quantile functions in samples from ...