Use of Bayesian modelling and analysis has become commonplace in many disciplines (finance, genetics and image analysis, for example). Many complex data sets are collected which do not readily admit standard distributions, and often comprise skew and kurtotic data. Such data is well-modelled by the very flexibly-shaped distributions of the quantile distribution family, whose members are defined by the inverse of their cumulative distribution functions and rarely have analytical likelihood functions defined. Without explicit likelihood functions, Bayesian methodologies such as Gibbs sampling cannot be applied to parameter estimation for this valuable class of distributions without resorting to numerical inversion. Approximate Bayesian comput...
Multivariate quantiles have been defined by a number of researchers and can be estimated by differen...
Quantile regression has received increasing attention both from a theoretical and from an empirical ...
International audienceWe consider the problem of estimating the p-quantile of a distribution when ob...
Bayesian inference can be extended to probability distributions defined in terms of their inverse di...
Suppose data consist of a random sample from a distribution function FY, which is unknown, and that ...
This paper is a study of the application of Bayesian Exponentially Tilted Empirical Likelihood to in...
Quantile regression, as a supplement to the mean regression, is often used when a comprehensive rel...
This paper illustrates application of Bayesian inference to quantile regression. Bayesian inference ...
In this paper, we present new multivariate quantile distributions and utilise likelihood-free Bayesi...
In this paper, we present new multivariate quantile distributions and utilise likelihood-free Bayesi...
In this paper, we present new multivariate quantile distributions and utilise likelihood-free Bayesi...
Lp–quantiles generalise quantiles and expectiles to account for the whole distribution of the random...
The classical theory of linear models focuses on the conditional mean function, i.e. the function th...
The classical theory of linear models focuses on the conditional mean function, i.e. the function th...
This paper extends the application of Bayesian inference to probability distributions defined in ter...
Multivariate quantiles have been defined by a number of researchers and can be estimated by differen...
Quantile regression has received increasing attention both from a theoretical and from an empirical ...
International audienceWe consider the problem of estimating the p-quantile of a distribution when ob...
Bayesian inference can be extended to probability distributions defined in terms of their inverse di...
Suppose data consist of a random sample from a distribution function FY, which is unknown, and that ...
This paper is a study of the application of Bayesian Exponentially Tilted Empirical Likelihood to in...
Quantile regression, as a supplement to the mean regression, is often used when a comprehensive rel...
This paper illustrates application of Bayesian inference to quantile regression. Bayesian inference ...
In this paper, we present new multivariate quantile distributions and utilise likelihood-free Bayesi...
In this paper, we present new multivariate quantile distributions and utilise likelihood-free Bayesi...
In this paper, we present new multivariate quantile distributions and utilise likelihood-free Bayesi...
Lp–quantiles generalise quantiles and expectiles to account for the whole distribution of the random...
The classical theory of linear models focuses on the conditional mean function, i.e. the function th...
The classical theory of linear models focuses on the conditional mean function, i.e. the function th...
This paper extends the application of Bayesian inference to probability distributions defined in ter...
Multivariate quantiles have been defined by a number of researchers and can be estimated by differen...
Quantile regression has received increasing attention both from a theoretical and from an empirical ...
International audienceWe consider the problem of estimating the p-quantile of a distribution when ob...