Regression models for count data are usually based on the Poisson distribution. This thesis is concerned with Bayesian inference in more flexible models for count data. Two classes of models and algorithms are presented and studied in this thesis. The first employs a generalisation of the Poisson distribution called the COM-Poisson distribution, which can represent both overdispersed data and underdispersed data. We also propose a density regression technique for count data, which, albeit centered around the Poisson distribution, can represent arbitrary discrete distributions. The key contribution of this thesis are MCMC-based methods for posterior inference in these models. One key challenge in COM-Poisson-based models is the fact that ...
Abstract. The Poisson model is a benchmark model for the statistical analysis of the count data. Som...
A variety of methods of modelling overdispersed count data are compared. The methods are classified ...
For decades, regression models beyond the mean for continuous responses have attracted great attenti...
Regression models for count data are usually based on the Poisson distribution. This thesis is conce...
COM-Poisson regression is an increasingly popular model for count data. Its main advantage is that i...
COM-Poisson regression is an increasingly popular model for count data. Its main advantage is that i...
Despite the increasing popularity of quantile regression models for continuous responses, models for...
The normalization constant in the distribution of a discrete random variable may not be available in...
Bayesian inference for models with intractable likelihood functions represents a challenging suite o...
We develop Bayesian models for density regression with emphasis on discrete outcomes. The problem of...
We exploit a suitable moment-based reparametrization of the Poisson mixtures distributions for devel...
Although Bayesian nonparametric mixture models for continuous data are well developed, the literatur...
Bayesian inference for models with intractable likelihood functions represents a challenging suite o...
Discrete data, often known as frequency or count data, comprises of observations which can only tak...
The analysis of count data within the framework of regression models plays a crucial role in many ap...
Abstract. The Poisson model is a benchmark model for the statistical analysis of the count data. Som...
A variety of methods of modelling overdispersed count data are compared. The methods are classified ...
For decades, regression models beyond the mean for continuous responses have attracted great attenti...
Regression models for count data are usually based on the Poisson distribution. This thesis is conce...
COM-Poisson regression is an increasingly popular model for count data. Its main advantage is that i...
COM-Poisson regression is an increasingly popular model for count data. Its main advantage is that i...
Despite the increasing popularity of quantile regression models for continuous responses, models for...
The normalization constant in the distribution of a discrete random variable may not be available in...
Bayesian inference for models with intractable likelihood functions represents a challenging suite o...
We develop Bayesian models for density regression with emphasis on discrete outcomes. The problem of...
We exploit a suitable moment-based reparametrization of the Poisson mixtures distributions for devel...
Although Bayesian nonparametric mixture models for continuous data are well developed, the literatur...
Bayesian inference for models with intractable likelihood functions represents a challenging suite o...
Discrete data, often known as frequency or count data, comprises of observations which can only tak...
The analysis of count data within the framework of regression models plays a crucial role in many ap...
Abstract. The Poisson model is a benchmark model for the statistical analysis of the count data. Som...
A variety of methods of modelling overdispersed count data are compared. The methods are classified ...
For decades, regression models beyond the mean for continuous responses have attracted great attenti...