open3noThis paper addresses two crucial issues in multiple linear regression analysis: (i) error terms whose distribution is non-normal because of the presence of asymmetry of the response variable and/or data coming from heterogeneous populations; (ii) selection of the regressors that effectively contribute to explaining patterns in the observations and are relevant for predicting the dependent variable. A solution to the first issue can be obtained through an approach in which the distribution of the error terms is modelled using a finite mixture of Gaussian distributions. In this paper we use this approach to specify a Bayesian linear regression model with non-normal errors; furthermore, by embedding Bayesian variable selection technique...
Advisors: Sanjib Basu.Committee members: Michael Geline; Balakrishna Hosmane; Alan Polansky; Duchwan...
We empirically show that Bayesian inference can be inconsistent under misspecification in simple lin...
<p>We study objective Bayesian inference for linear regression models with residual errors distribut...
This paper addresses two crucial issues in multiple linear regression analysis: (i) error terms whos...
none2In some situations, the distribution of the error terms of a multivariate linear regression mod...
The dissertation consists of three essays on regression models with non-normal error terms. In th...
An important statistical application is the problem of determining an appropriate set of input varia...
Multivariate regression analysis is a well-known technique used to predict values of d responses fro...
We study Bayesian linear regression models with skew-symmetric scale mixtures of normal error distri...
In this article, we study the connections between Bayesian methods and non-Bayesian methods for vari...
Variable selection techniques have been well researched and used in many different fields. There is ...
<p>Bayesian variable selection often assumes normality, but the effects of model misspecification ar...
This article proposes a new data-based prior distribution for the error vari-ance in a Gaussian line...
Our article presents a general treatment of the linear regression model, in which the error distribu...
From a Bayesian viewpoint, the answer (in theory, at least) to the general model selection problem i...
Advisors: Sanjib Basu.Committee members: Michael Geline; Balakrishna Hosmane; Alan Polansky; Duchwan...
We empirically show that Bayesian inference can be inconsistent under misspecification in simple lin...
<p>We study objective Bayesian inference for linear regression models with residual errors distribut...
This paper addresses two crucial issues in multiple linear regression analysis: (i) error terms whos...
none2In some situations, the distribution of the error terms of a multivariate linear regression mod...
The dissertation consists of three essays on regression models with non-normal error terms. In th...
An important statistical application is the problem of determining an appropriate set of input varia...
Multivariate regression analysis is a well-known technique used to predict values of d responses fro...
We study Bayesian linear regression models with skew-symmetric scale mixtures of normal error distri...
In this article, we study the connections between Bayesian methods and non-Bayesian methods for vari...
Variable selection techniques have been well researched and used in many different fields. There is ...
<p>Bayesian variable selection often assumes normality, but the effects of model misspecification ar...
This article proposes a new data-based prior distribution for the error vari-ance in a Gaussian line...
Our article presents a general treatment of the linear regression model, in which the error distribu...
From a Bayesian viewpoint, the answer (in theory, at least) to the general model selection problem i...
Advisors: Sanjib Basu.Committee members: Michael Geline; Balakrishna Hosmane; Alan Polansky; Duchwan...
We empirically show that Bayesian inference can be inconsistent under misspecification in simple lin...
<p>We study objective Bayesian inference for linear regression models with residual errors distribut...