A study on Bayesian inference for the linear regression model is carried out in the case when the prior distribution for the regression parameters is assumed to follow the alpha-skew-normal distribution. The posterior distribution and its associated full conditional distributions are derived. Then, the Bayesian point estimates and credible intervals for the regression parameters are determined based on a simulation study using the Markov chain Monte Carlo method. The parameter estimates and intervals obtained are compared with their counterparts when the prior distributions are assumed either normal or non-informative. In addition, the findings are applied to Scottish hills races data. It appears that when the data are skewed, the alpha-ske...
Motivated by the analysis of the distribution of university grades, which is usually asymmetric, we ...
Frequentist and likelihood based methods of inference encounter several difficulties with the multiv...
We consider a Bayesian analysis of linear regression models that can account for skewed error distri...
A study on Bayesian inference for the linear regression model is carried out in the case when the pr...
A study on Bayesian inference for the linear regression model is carried out in the case when the pr...
In recent years, with widely accesses to powerful computers and development of new computing methods...
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...
We study Bayesian linear regression models with skew-symmetric scale mixtures of normal error distri...
Frequentist and likelihood methods of inference based on the multivariate skew-normal model encounte...
We introduce a class of shape mixtures of skewed distributions and study some of its main properties...
Random parameter models have been found to outperform fixed parameter models to estimate dose-respon...
In the Bayesian approach, the data are supplemented with additional information in the form of a pri...
Motivated by analysis of the distribution of university grades, which is usually asymmetric, we disc...
The aim of this paper is to discuss a scalar posterior distribution for the shape parameter k of the...
Motivated by the analysis of the distribution of university grades, which is usually asymmetric, we ...
Frequentist and likelihood based methods of inference encounter several difficulties with the multiv...
We consider a Bayesian analysis of linear regression models that can account for skewed error distri...
A study on Bayesian inference for the linear regression model is carried out in the case when the pr...
A study on Bayesian inference for the linear regression model is carried out in the case when the pr...
In recent years, with widely accesses to powerful computers and development of new computing methods...
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...
We study Bayesian linear regression models with skew-symmetric scale mixtures of normal error distri...
Frequentist and likelihood methods of inference based on the multivariate skew-normal model encounte...
We introduce a class of shape mixtures of skewed distributions and study some of its main properties...
Random parameter models have been found to outperform fixed parameter models to estimate dose-respon...
In the Bayesian approach, the data are supplemented with additional information in the form of a pri...
Motivated by analysis of the distribution of university grades, which is usually asymmetric, we disc...
The aim of this paper is to discuss a scalar posterior distribution for the shape parameter k of the...
Motivated by the analysis of the distribution of university grades, which is usually asymmetric, we ...
Frequentist and likelihood based methods of inference encounter several difficulties with the multiv...
We consider a Bayesian analysis of linear regression models that can account for skewed error distri...