Univariate and multivariate general linear regression models, subject to linear inequality constraints, arise in many scientific applications. The linear inequality restrictions on model parameters are often available from phenomenological knowledge and motivated by machine learning applications of high-consequence engineering systems (Agrell, 2019; Veiga and Marrel, 2012). Some studies on the multiple linear models consider known linear combinations of the regression coefficient parameters restricted between upper and lower bounds. In the present paper, we consider both univariate and multivariate general linear models subjected to this kind of linear restrictions. So far, research on univariate cases based on Bayesian methods is all under...
This paper deals with the problem of multicollinearity in a multiple linear regression model with li...
Researchers often have one or more theories or expectations with respect to the outcome of their emp...
This dissertation consists of five chapters with three distinct but related research projects. In Ch...
In this paper, we consider the multicollinearity problem in the gamma regression model when model pa...
In this paper we propose an efficient Gibbs sampler for simulation of a multivariate normal random v...
This dissertation deals with normal linear models with inequality constraints among model parameters...
Abstract: Constrained parameter problems arise in a wide variety of applications. This article deals...
In this paper, we consider a multivariate linear model with complete/incomplete data, where the regr...
The expectations that researchers have about the structure in the data can often be formulated in te...
In econometric models, sign or inequality constraints on parameters arise in a wide variety of appli...
Maximum likelihood (ML) estimation for linear models with longitudinal data under inequality restric...
AbstractThis paper studies the admissibility of both homogeneous and inhomogeneous linear estimators...
In recent years, with widely accesses to powerful computers and development of new computing methods...
In recent years, there has been growing interest in statistical models incorporating inequality cons...
AbstractThe problem of estimating the k-dimensional parameter vector in a linear regression model wi...
This paper deals with the problem of multicollinearity in a multiple linear regression model with li...
Researchers often have one or more theories or expectations with respect to the outcome of their emp...
This dissertation consists of five chapters with three distinct but related research projects. In Ch...
In this paper, we consider the multicollinearity problem in the gamma regression model when model pa...
In this paper we propose an efficient Gibbs sampler for simulation of a multivariate normal random v...
This dissertation deals with normal linear models with inequality constraints among model parameters...
Abstract: Constrained parameter problems arise in a wide variety of applications. This article deals...
In this paper, we consider a multivariate linear model with complete/incomplete data, where the regr...
The expectations that researchers have about the structure in the data can often be formulated in te...
In econometric models, sign or inequality constraints on parameters arise in a wide variety of appli...
Maximum likelihood (ML) estimation for linear models with longitudinal data under inequality restric...
AbstractThis paper studies the admissibility of both homogeneous and inhomogeneous linear estimators...
In recent years, with widely accesses to powerful computers and development of new computing methods...
In recent years, there has been growing interest in statistical models incorporating inequality cons...
AbstractThe problem of estimating the k-dimensional parameter vector in a linear regression model wi...
This paper deals with the problem of multicollinearity in a multiple linear regression model with li...
Researchers often have one or more theories or expectations with respect to the outcome of their emp...
This dissertation consists of five chapters with three distinct but related research projects. In Ch...