Frequentist and likelihood methods of inference based on the multivariate skew-normal model encounter several technical difficulties with this model. In spite of the popularity of this class of densities, there are no broadly satisfactory solutions for estimation and testing problems. A general population Monte Carlo algorithm is proposed which: (1) exploits the latent structure stochastic representation of skew-normal random variables to provide a full Bayesian analysis of the model; and (2) accounts for the presence of constraints in the parameter space. The proposed approach can be defined as weakly informative, since the prior distribution approximates the actual reference prior for the shape parameter vector. Results are compared with ...
The skew-normal distribution is a class of densities that preserves some useful properties of the n...
The skew-normal (SN) distribution is a generalization of the normal distribution, where a shape para...
A study on Bayesian inference for the linear regression model is carried out in the case when the pr...
Frequentist and likelihood methods of inference based on the multivariate skew-normal model encounte...
Frequentist and likelihood methods of inference based on the multivariate skew-normal model encounte...
Frequentist and likelihood based methods of inference encounter several difficulties with the multiv...
We propose a novel Bayesian analysis of the p-variate skew-t model, providing a new parameterization...
We develop a Bayesian approach for the selection of skew in multivariate skew t distributions constr...
In this paper we discuss a Bayesian analysis of the scalar skew-normal model. This model defines a c...
The dissertation is devoted to modelling with a new class of multivariate skew elliptical distributi...
Skew-normal distribution is a class of distributions that includes the normal distributions as a spe...
Motivated by analysis of the distribution of university grades, which is usually asymmetric, we disc...
Normal mixture models provide the most popular framework for modelling heterogeneity in a population...
Linear mixed models (LMM) are frequently used to analyze repeated measures data, because they are mo...
We introduce a class of shape mixtures of skewed distributions and study some of its main properties...
The skew-normal distribution is a class of densities that preserves some useful properties of the n...
The skew-normal (SN) distribution is a generalization of the normal distribution, where a shape para...
A study on Bayesian inference for the linear regression model is carried out in the case when the pr...
Frequentist and likelihood methods of inference based on the multivariate skew-normal model encounte...
Frequentist and likelihood methods of inference based on the multivariate skew-normal model encounte...
Frequentist and likelihood based methods of inference encounter several difficulties with the multiv...
We propose a novel Bayesian analysis of the p-variate skew-t model, providing a new parameterization...
We develop a Bayesian approach for the selection of skew in multivariate skew t distributions constr...
In this paper we discuss a Bayesian analysis of the scalar skew-normal model. This model defines a c...
The dissertation is devoted to modelling with a new class of multivariate skew elliptical distributi...
Skew-normal distribution is a class of distributions that includes the normal distributions as a spe...
Motivated by analysis of the distribution of university grades, which is usually asymmetric, we disc...
Normal mixture models provide the most popular framework for modelling heterogeneity in a population...
Linear mixed models (LMM) are frequently used to analyze repeated measures data, because they are mo...
We introduce a class of shape mixtures of skewed distributions and study some of its main properties...
The skew-normal distribution is a class of densities that preserves some useful properties of the n...
The skew-normal (SN) distribution is a generalization of the normal distribution, where a shape para...
A study on Bayesian inference for the linear regression model is carried out in the case when the pr...