This article introduces Bayesian inference on the bimodality of the generalized von Mises (GvM) distribution for planar directions (Gatto and Jammalamadaka, 2007). The GvM dis- tribution is a flexible model that can be axial symmetric or asymmetric, unimodal or bimodal. Two inferential approaches are analysed. The first is the test of null hypothesis of bimodality and Bayes factors are obtained. The second approach provides a two-dimensional high pos- terior density (HPD) credible set for two parameters relevant to bimodality. Based on the identification of the two-dimensional parametric region associated to bimodality, the inclusion of the HPD credible set in that region allows us to infer on the bimodality of the underlying GvM distributi...
This paper focuses on the development of a new extension of the generalized skew-normal distribution...
Direct application of Bayes' theorem to generalized data yields a posterior probability distribution...
Item does not contain fulltextProbability Matrix Decomposition models may be used to model observed ...
We consider Bayesian inference using an extension of the family of skew-elliptical distributions stu...
A univariate balanced one-way sire model with two variance components is used to investigate whether...
A generalization of the von Mises distribution, which is broad enough to cover unimodality as well a...
A direction is defined here as a multi-dimensional unit vector. Such unitvectors form directional da...
This article deals with some important computational aspects of the generalized von Mises distributi...
Circular data are data measured in angles or directions. Although they occur in a wide variety of sc...
Barndorff-Nielsen’s celebrated p*-formula and variations thereof have amongst their various attracti...
In application areas like bioinformatics multivariate distributions on angles are encoun-tered which...
Motivated by a study from cognitive psychology, we develop a Generalized Linear Model for circular d...
Bimodal distributions have rarely been studied although they appear frequently in datasets. We deve...
A Bayesian approach for mode inference which works in two steps. First, a mixture distribution is fi...
Circular data are encountered in a variety of fields. A dataset on music listening behaviour through...
This paper focuses on the development of a new extension of the generalized skew-normal distribution...
Direct application of Bayes' theorem to generalized data yields a posterior probability distribution...
Item does not contain fulltextProbability Matrix Decomposition models may be used to model observed ...
We consider Bayesian inference using an extension of the family of skew-elliptical distributions stu...
A univariate balanced one-way sire model with two variance components is used to investigate whether...
A generalization of the von Mises distribution, which is broad enough to cover unimodality as well a...
A direction is defined here as a multi-dimensional unit vector. Such unitvectors form directional da...
This article deals with some important computational aspects of the generalized von Mises distributi...
Circular data are data measured in angles or directions. Although they occur in a wide variety of sc...
Barndorff-Nielsen’s celebrated p*-formula and variations thereof have amongst their various attracti...
In application areas like bioinformatics multivariate distributions on angles are encoun-tered which...
Motivated by a study from cognitive psychology, we develop a Generalized Linear Model for circular d...
Bimodal distributions have rarely been studied although they appear frequently in datasets. We deve...
A Bayesian approach for mode inference which works in two steps. First, a mixture distribution is fi...
Circular data are encountered in a variety of fields. A dataset on music listening behaviour through...
This paper focuses on the development of a new extension of the generalized skew-normal distribution...
Direct application of Bayes' theorem to generalized data yields a posterior probability distribution...
Item does not contain fulltextProbability Matrix Decomposition models may be used to model observed ...