In this paper, we consider the multicollinearity problem in the gamma regression model when model parameters are linearly restricted. The linear restrictions are available from prior information to ensure the validity of scientific theories or structural consistency based on physical phenomena. In order to make relevant statistical inference for a model any available knowledge and prior information on the model parameters should be taken into account. This paper proposes therefore an algorithm to acquire Bayesian estimator for the parameters of a gamma regression model subjected to some linear inequality restrictions. We then show that the proposed estimator outperforms the ordinary estimators such as the maximum likelihood and ridge estima...
Researchers often have one or more theories or expectations with respect to the outcome of their emp...
Structure involving inequalities is often used in the statistical inference. Parameter estimation in...
Owing to the broad applicability of gamma regression, we propose some improved estimators based on t...
Univariate and multivariate general linear regression models, subject to linear inequality constrain...
The known linear regression model (LRM) is used mostly for modelling the QSAR relationship between t...
In recent years, there has been growing interest in statistical models incorporating inequality cons...
Abstract. This paper considers a nonlinear regression model, in which the dependent variable has the...
Abstract. This paper considers a nonlinear regression model, in which the dependent variable has the...
In recent years, there has been growing interest in statistical models incorporating inequality cons...
This paper considers a nonlinear regression model, in which the dependent variable has the gamma dis...
This dissertation deals with normal linear models with inequality constraints among model parameters...
Quantile regression seeks to extend classical least square regression by modeling quantiles of the c...
In this paper we propose an efficient Gibbs sampler for simulation of a multivariate normal random v...
Owing to the broad applicability of gamma regression, we propose some improved estimators based on t...
The expectations that researchers have about the structure in the data can often be formulated in te...
Researchers often have one or more theories or expectations with respect to the outcome of their emp...
Structure involving inequalities is often used in the statistical inference. Parameter estimation in...
Owing to the broad applicability of gamma regression, we propose some improved estimators based on t...
Univariate and multivariate general linear regression models, subject to linear inequality constrain...
The known linear regression model (LRM) is used mostly for modelling the QSAR relationship between t...
In recent years, there has been growing interest in statistical models incorporating inequality cons...
Abstract. This paper considers a nonlinear regression model, in which the dependent variable has the...
Abstract. This paper considers a nonlinear regression model, in which the dependent variable has the...
In recent years, there has been growing interest in statistical models incorporating inequality cons...
This paper considers a nonlinear regression model, in which the dependent variable has the gamma dis...
This dissertation deals with normal linear models with inequality constraints among model parameters...
Quantile regression seeks to extend classical least square regression by modeling quantiles of the c...
In this paper we propose an efficient Gibbs sampler for simulation of a multivariate normal random v...
Owing to the broad applicability of gamma regression, we propose some improved estimators based on t...
The expectations that researchers have about the structure in the data can often be formulated in te...
Researchers often have one or more theories or expectations with respect to the outcome of their emp...
Structure involving inequalities is often used in the statistical inference. Parameter estimation in...
Owing to the broad applicability of gamma regression, we propose some improved estimators based on t...