peer reviewedThis paper presents Bayesian directional data modeling via the skew-rotationally-symmetric Fisher-von Mises-Langevin (FvML) distribution. The prior distributions for the parameters are a pivotal building block in Bayesian analysis, therefore, the impact of the proposed priors will be quantified using the Wasserstein Impact Measure (WIM) to guide the practitioner in the implementation process. For the computation of the posterior, modifications of Gibbs and slice samplings are applied for generating samples. We demonstrate the applicability of our contribution via synthetic and real data analyses. Our investigation paves the way for Bayesian analysis of skew circular and spherical data
Circular data are data measured in angles or directions. Although they occur in a wide variety of sc...
This article develops a new class of distributions by introducing skewness in the multivariate ellip...
In this paper we discuss a Bayesian analysis of the scalar skew-normal model. This model defines a c...
This paper presents Bayesian directional data modeling via the skew-rotationally-symmetric Fisher-vo...
This paper presents Bayesian directional data modeling via the skew-rotationally-symmetric Fisher-v...
We introduce a class of shape mixtures of skewed distributions and study some of its main properties...
Motivated by the analysis of the distribution of university grades, which is usually asymmetric, we ...
Motivated by analysis of the distribution of university grades, which is usually asymmetric, we disc...
We study the Jeffreys prior and its properties for the shape parameter of univariate skew-t distribu...
We develop a Bayesian approach for the selection of skew in multivariate skew t distributions constr...
The dissertation is devoted to modelling with a new class of multivariate skew elliptical distributi...
We propose a novel Bayesian analysis of the p-variate skew-t model, providing a new parameterization...
We consider a Bayesian analysis of linear regression models that can account for skewed error distri...
Most multivariate measures of skewness in the literature measure the overall skewness of a distribut...
Directional and angular information are to be found in almost every field of science. Directional st...
Circular data are data measured in angles or directions. Although they occur in a wide variety of sc...
This article develops a new class of distributions by introducing skewness in the multivariate ellip...
In this paper we discuss a Bayesian analysis of the scalar skew-normal model. This model defines a c...
This paper presents Bayesian directional data modeling via the skew-rotationally-symmetric Fisher-vo...
This paper presents Bayesian directional data modeling via the skew-rotationally-symmetric Fisher-v...
We introduce a class of shape mixtures of skewed distributions and study some of its main properties...
Motivated by the analysis of the distribution of university grades, which is usually asymmetric, we ...
Motivated by analysis of the distribution of university grades, which is usually asymmetric, we disc...
We study the Jeffreys prior and its properties for the shape parameter of univariate skew-t distribu...
We develop a Bayesian approach for the selection of skew in multivariate skew t distributions constr...
The dissertation is devoted to modelling with a new class of multivariate skew elliptical distributi...
We propose a novel Bayesian analysis of the p-variate skew-t model, providing a new parameterization...
We consider a Bayesian analysis of linear regression models that can account for skewed error distri...
Most multivariate measures of skewness in the literature measure the overall skewness of a distribut...
Directional and angular information are to be found in almost every field of science. Directional st...
Circular data are data measured in angles or directions. Although they occur in a wide variety of sc...
This article develops a new class of distributions by introducing skewness in the multivariate ellip...
In this paper we discuss a Bayesian analysis of the scalar skew-normal model. This model defines a c...