Discrete Weibul (DW) is considered to have the ability to capture under and over-dispersion simultaneously and also have a closed-form analytical expression of the quantiles of the conditional distribution. There is a need to further investigate how effective the model is, as compared to other competing models in the context of classical and Bayesian technique. In this study, the strength of DW is investigated, for both on frequentist and Bayesian technique. The Bayesian DW adopts parameterization, which makes both parameters of the discrete Weibull distribution to be dependent on the predictors. Bayesian Generalized linear mixed model is also implemented and is compared with the BDW, since Bayesian generalized linear mixed model is known t...
The Poisson regression model remains an important tool in the econometric analysis of count data. In...
The need to model count data correctly calls for introducting a flexible yet robust model that can s...
Regression models for count data are usually based on the Poisson distribution. This thesis is conce...
This thesis was submitted for the award of Doctor of Philosophy and was awarded by Brunel University...
Longitudinal data refer to multiple observations collected on the same subject (or unit) over time. ...
Regression for count data is widely performed by models such as Poisson, negative binomial (NB) and ...
We develop Bayesian models for density regression with emphasis on discrete outcomes. The problem of...
Discrete data are collected in many application areas and are often characterised by highly-skewed d...
Bayesian estimation of the continuous Weibull distribution parameters was studied by Ahmad and Ahmad...
The traditional Poisson regression model for fitting count data is considered inadequate to fit over...
Regression models for count data are usually based on the Poisson distribution. This thesis is conce...
© 2018 SAGE Publications. A Weibull-model-based approach is examined to handle under- and overdisper...
A Weibull-model-based approach is examined to handle under- and overdispersed discrete data in a hie...
For decades, regression models beyond the mean for continuous responses have attracted great attenti...
The widespread popularity and use of both the Poisson and the negative binomial models for count dat...
The Poisson regression model remains an important tool in the econometric analysis of count data. In...
The need to model count data correctly calls for introducting a flexible yet robust model that can s...
Regression models for count data are usually based on the Poisson distribution. This thesis is conce...
This thesis was submitted for the award of Doctor of Philosophy and was awarded by Brunel University...
Longitudinal data refer to multiple observations collected on the same subject (or unit) over time. ...
Regression for count data is widely performed by models such as Poisson, negative binomial (NB) and ...
We develop Bayesian models for density regression with emphasis on discrete outcomes. The problem of...
Discrete data are collected in many application areas and are often characterised by highly-skewed d...
Bayesian estimation of the continuous Weibull distribution parameters was studied by Ahmad and Ahmad...
The traditional Poisson regression model for fitting count data is considered inadequate to fit over...
Regression models for count data are usually based on the Poisson distribution. This thesis is conce...
© 2018 SAGE Publications. A Weibull-model-based approach is examined to handle under- and overdisper...
A Weibull-model-based approach is examined to handle under- and overdispersed discrete data in a hie...
For decades, regression models beyond the mean for continuous responses have attracted great attenti...
The widespread popularity and use of both the Poisson and the negative binomial models for count dat...
The Poisson regression model remains an important tool in the econometric analysis of count data. In...
The need to model count data correctly calls for introducting a flexible yet robust model that can s...
Regression models for count data are usually based on the Poisson distribution. This thesis is conce...