In recent years, with widely accesses to powerful computers and development of new computing methods, Bayesian method has been applied to many fields including stock forecasting, machine learning, and genome data analysis. In this thesis, we will give an introduction to estimation methods for linear regression models including least square method, maximum likelihood method, and Bayesian method. We then describe Bayesian estimation for linear regression model in detail, and the prior and posterior distributions for different parameters will be derived. This method provides a posterior distribution of the parameters in the linear regression model, so that the uncertainties are integrated. Extensive experiments are conducted on simulated data ...
This chapter provides a general overview of Bayesian statistical methods. Topics include the notion ...
Bayesian semi-parametric inference is considered for a log-linear model. This model consists of a p...
This study proposes the application of the Bayesian st and point and approach to economics and econo...
In recent years, with widely accesses to powerful computers and development of new computing methods...
In the Bayesian approach, the data are supplemented with additional information in the form of a pri...
Bayesian linear regression is an approach to linear regression where statistical analysis depend of ...
This dissertation consists of five chapters with three distinct but related research projects. In Ch...
Bayesian methods combine information available from data with any prior information available from e...
A study on Bayesian inference for the linear regression model is carried out in the case when the pr...
Abstract. The article describe the model, derivation, and implementation of variational Bayesian inf...
Abstract: The linear statistical model provides a flexible approach to quan-tifying the relationship...
The lasso estimate for linear regression corresponds to a posterior mode when independent, double-ex...
It is sometimes desired to update solutions to systems of equations or other problems as new infor...
Model selection is an important problem in many branches including statistical analysis. In this the...
The Bayesian researcher should know the basic ideas underlying Bayesian methodology and the computat...
This chapter provides a general overview of Bayesian statistical methods. Topics include the notion ...
Bayesian semi-parametric inference is considered for a log-linear model. This model consists of a p...
This study proposes the application of the Bayesian st and point and approach to economics and econo...
In recent years, with widely accesses to powerful computers and development of new computing methods...
In the Bayesian approach, the data are supplemented with additional information in the form of a pri...
Bayesian linear regression is an approach to linear regression where statistical analysis depend of ...
This dissertation consists of five chapters with three distinct but related research projects. In Ch...
Bayesian methods combine information available from data with any prior information available from e...
A study on Bayesian inference for the linear regression model is carried out in the case when the pr...
Abstract. The article describe the model, derivation, and implementation of variational Bayesian inf...
Abstract: The linear statistical model provides a flexible approach to quan-tifying the relationship...
The lasso estimate for linear regression corresponds to a posterior mode when independent, double-ex...
It is sometimes desired to update solutions to systems of equations or other problems as new infor...
Model selection is an important problem in many branches including statistical analysis. In this the...
The Bayesian researcher should know the basic ideas underlying Bayesian methodology and the computat...
This chapter provides a general overview of Bayesian statistical methods. Topics include the notion ...
Bayesian semi-parametric inference is considered for a log-linear model. This model consists of a p...
This study proposes the application of the Bayesian st and point and approach to economics and econo...