In this thesis, two areas of goodness-of fit are discussed and new methodology proposed. In the first, Bayesian methods are introduced to provide a narrow band of alternative continuous distributions when the distribution tested is uniform or normal. A particular use of Bayesian methods allows consideration of the problem of testing the distribution of latent (unobserved) variables when these are connected by a known relationship to a set of observed variables. The technique is used to advance an interesting procedure introduced in Geology by Krumbein and for a modern example, to test the distribution of the frailty term (random effects) in a Cox Proportional Hazards (PH) model. The second part of the thesis deals with discrete data with p...
In modern statistical and machine learning applications, there is an increasing need for developing ...
A quantitative procedure to decide whether a model provides a good descriptionof data is often based...
The paper proposes a novel model assessment paradigm aiming to address shortcoming of posterior pred...
This chapter focuses on Bayesian methods and illustrates both the intrinsic unity of Bayesian thinki...
In this paper we propose a general model determination strategy based on Bayesian methods for the no...
This paper exposits and develops Bayesian methods of model criticism and robustness analysis. The ob...
A Bayesian analysis for the Weibull proportional hazard (PH) model is presented. A comparison betwee...
A Bayesian analysis for the Weibull proportional hazard (PH) model is presented. A comparison betwee...
Due to the concern for possible carcinogenic effects of potentially hazardous substances such as che...
Abstract: A counting process approach to multiple event times modeled by an Andersen-Gill-type exten...
Approaches for statistical inference Introduction Motivating Vignettes Defining the Approaches ...
Abstract: We propose a general Bayesian criterion for model assessment. The cri-terion is constructe...
While the Bayesian parameter estimation has gained a wider acknowledgement among political scientist...
Modern statistical software and machine learning libraries are enabling semi-automated statistical i...
Hypothesis testing is a special form of model selection. Once a pair of competing models is fully de...
In modern statistical and machine learning applications, there is an increasing need for developing ...
A quantitative procedure to decide whether a model provides a good descriptionof data is often based...
The paper proposes a novel model assessment paradigm aiming to address shortcoming of posterior pred...
This chapter focuses on Bayesian methods and illustrates both the intrinsic unity of Bayesian thinki...
In this paper we propose a general model determination strategy based on Bayesian methods for the no...
This paper exposits and develops Bayesian methods of model criticism and robustness analysis. The ob...
A Bayesian analysis for the Weibull proportional hazard (PH) model is presented. A comparison betwee...
A Bayesian analysis for the Weibull proportional hazard (PH) model is presented. A comparison betwee...
Due to the concern for possible carcinogenic effects of potentially hazardous substances such as che...
Abstract: A counting process approach to multiple event times modeled by an Andersen-Gill-type exten...
Approaches for statistical inference Introduction Motivating Vignettes Defining the Approaches ...
Abstract: We propose a general Bayesian criterion for model assessment. The cri-terion is constructe...
While the Bayesian parameter estimation has gained a wider acknowledgement among political scientist...
Modern statistical software and machine learning libraries are enabling semi-automated statistical i...
Hypothesis testing is a special form of model selection. Once a pair of competing models is fully de...
In modern statistical and machine learning applications, there is an increasing need for developing ...
A quantitative procedure to decide whether a model provides a good descriptionof data is often based...
The paper proposes a novel model assessment paradigm aiming to address shortcoming of posterior pred...