Circular data are encountered in a variety of fields. A dataset on music listening behaviour throughout the day motivates development of models for multi-modal circular data where the number of modes is not known a priori. To fit a mixture model with an unknown number of modes, the reversible jump Metropolis-Hastings MCMC algorithm is adapted for circular data and presented. The performance of this sampler is investigated in a simulation study. At small-to-medium sample sizes (Formula presented.), the number of components is uncertain. At larger sample sizes (Formula presented.) the estimation of the number of components is accurate. Application to the music listening data shows interpretable results that correspond with intuition
The von Mises distribution is often useful for modelling circular data problems. We consider a model...
Abstract only:\ud \ud Today’s data analysts and modellers are in the luxurious position of being abl...
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...
The Bayesian estimation of a special case of mixtures of normal distributions with an unknown number...
Motivated by a study from cognitive psychology, we develop a Generalized Linear Model for circular d...
Circular data are data measured in angles or directions. Although they occur in a wide variety of sc...
In the past fifteen years there has been a dramatic increase of interest in Bayesian mixture models....
Circular data refers to data recorded as points on a circle, either denoting directions, or times wh...
This paper is a contribution to the methodology of fully Bayesian inference in a multivariate Gaussi...
MCMC sampling is a methodology that is becoming increasingly important in statistical signal process...
Markov chain Monte Carlo (MCMC) methods for Bayesian computation are mostly used when the dominating...
In this thesis, we propose a Bayesian methodology based on sampling importance re-sampling for asymm...
Circular variables arise in a multitude of data-modelling contexts ranging from robotics to the soci...
Circular variables arise in a multitude of data-modelling contexts ranging from robotics to the soci...
The von Mises distribution is often useful for modelling circular data problems. We consider a model...
Abstract only:\ud \ud Today’s data analysts and modellers are in the luxurious position of being abl...
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...
The Bayesian estimation of a special case of mixtures of normal distributions with an unknown number...
Motivated by a study from cognitive psychology, we develop a Generalized Linear Model for circular d...
Circular data are data measured in angles or directions. Although they occur in a wide variety of sc...
In the past fifteen years there has been a dramatic increase of interest in Bayesian mixture models....
Circular data refers to data recorded as points on a circle, either denoting directions, or times wh...
This paper is a contribution to the methodology of fully Bayesian inference in a multivariate Gaussi...
MCMC sampling is a methodology that is becoming increasingly important in statistical signal process...
Markov chain Monte Carlo (MCMC) methods for Bayesian computation are mostly used when the dominating...
In this thesis, we propose a Bayesian methodology based on sampling importance re-sampling for asymm...
Circular variables arise in a multitude of data-modelling contexts ranging from robotics to the soci...
Circular variables arise in a multitude of data-modelling contexts ranging from robotics to the soci...
The von Mises distribution is often useful for modelling circular data problems. We consider a model...
Abstract only:\ud \ud Today’s data analysts and modellers are in the luxurious position of being abl...
A Bayesian approach for mode inference which works in two steps. First, a mixture distribution is fi...