From a Bayesian viewpoint, the answer (in theory, at least) to the general model selection problem is known. However, the formalization of the selection problem does not realistically match the iterative process that occurs when selecting a model in practice. In addition, computational restrictions limit the applicability of the solution in general. In the multiple linear regression variable selection setting, however, the Bayesian approach offers some practical procedures that can be used to at least reduce the possible number of models under consideration. 'Semi-automatic' methods for Bayesian variable selection have recently been developed by Mitchell and Beauchamp (1988) and George and McCulloch (1993) using relatively uniformative prio...
Thesis (Ph.D.)--University of Washington, 2023Choosing a statistical model and accounting for uncert...
Linear regression models are often used to represent the cost and effectiveness of medical treatment...
In health sciences, identifying the leading causes that govern the behaviour of a response variable ...
In this chapter we survey Bayesian approaches for variable selection and model choice in regression ...
In principle, the Bayesian approach to model selection is straightforward. Prior probability distrib...
In objective Bayesian model selection, no single criterion has emerged as dominant in defining objec...
The goal of this paper is to compare several widely used Bayesian model selection methods in practic...
Introduction A Bayesian approach to model selection proceeds as follows. Suppose that the data y ar...
Abstract. The selection of variables in regression problems has occupied the minds of many statistic...
Advisors: Sanjib Basu.Committee members: Michael Geline; Balakrishna Hosmane; Alan Polansky; Duchwan...
Bayesian model selection is a fundamental part of the Bayesian statistical modeling process. The qua...
In this article, we study the connections between Bayesian methods and non-Bayesian methods for vari...
This paper proposes a new approach for model selection and applies it to a classical time series mod...
Model selection is an important part of any statistical analysis, and indeed is cen-tral to the purs...
This paper presents a novel Bayesian variable selection approach that accounts for the sign of the r...
Thesis (Ph.D.)--University of Washington, 2023Choosing a statistical model and accounting for uncert...
Linear regression models are often used to represent the cost and effectiveness of medical treatment...
In health sciences, identifying the leading causes that govern the behaviour of a response variable ...
In this chapter we survey Bayesian approaches for variable selection and model choice in regression ...
In principle, the Bayesian approach to model selection is straightforward. Prior probability distrib...
In objective Bayesian model selection, no single criterion has emerged as dominant in defining objec...
The goal of this paper is to compare several widely used Bayesian model selection methods in practic...
Introduction A Bayesian approach to model selection proceeds as follows. Suppose that the data y ar...
Abstract. The selection of variables in regression problems has occupied the minds of many statistic...
Advisors: Sanjib Basu.Committee members: Michael Geline; Balakrishna Hosmane; Alan Polansky; Duchwan...
Bayesian model selection is a fundamental part of the Bayesian statistical modeling process. The qua...
In this article, we study the connections between Bayesian methods and non-Bayesian methods for vari...
This paper proposes a new approach for model selection and applies it to a classical time series mod...
Model selection is an important part of any statistical analysis, and indeed is cen-tral to the purs...
This paper presents a novel Bayesian variable selection approach that accounts for the sign of the r...
Thesis (Ph.D.)--University of Washington, 2023Choosing a statistical model and accounting for uncert...
Linear regression models are often used to represent the cost and effectiveness of medical treatment...
In health sciences, identifying the leading causes that govern the behaviour of a response variable ...