Most simultaneous equation models involve the inclusion of lagged endogenous and/or exogenous variables and sometimes it may be misleading to assume that the errors are normally distributed when in reality they exhibit functional formsthat are not normal especially in practical situations. The classical methods of estimating parameters of simultaneous equation models are usually affected by the presence of autocorrelation among the error terms. Unfortunately, in practice the form of correlation between the pairs of the random deviates is unknown.In this paper classical and Bayesian methods for the estimation of simultaneous equation model withlagged endogenous variables and first order serially correlated errors are considered. The smallsam...
This paper studies the use of the Jeffreys’ prior in Bayesian analysis of the simultaneous equations ...
This paper outlines an approach to Bayesian semiparametric regression in multiple equation models wh...
nonlinear simultaneous equations ABSTRACT: This paper outlines an approach to Bayesian semiparametri...
In this paper various methods for the estimation of simultaneous equation models with lagged endogen...
In simultaneous equations model, multicollinearity and status of identification of the equations hav...
This paper introduces a semi-parametric bootstrapping approach to Bayesian analysis of structural pa...
A bootstrap simulation approach was used to generate values for endogenous variables of a simultaneo...
The article is devoted to the interrelation between methods of estimating parameters of simultaneous...
One of the assumptions of Classical Linear Regression Model (CLRMA), is that the regress...
This paper outlines an approach to Bayesian semiparametric regression in multiple equation models wh...
We propose two simple bias reduction procedures that apply to estimators in a general static simulta...
This paper develops estimators for simultaneous equations with spatial autoregressive or spatial mov...
Diffuse priors lead to pathological posterior behavior when used in Bayesian analyses of Simultaneou...
The performances of two full information techniques, Three Stage Least Squares (3SLS) and Full Infor...
Using Markov Chain Monte Carlo algorithms within the limited information Bayesian framework, we esti...
This paper studies the use of the Jeffreys’ prior in Bayesian analysis of the simultaneous equations ...
This paper outlines an approach to Bayesian semiparametric regression in multiple equation models wh...
nonlinear simultaneous equations ABSTRACT: This paper outlines an approach to Bayesian semiparametri...
In this paper various methods for the estimation of simultaneous equation models with lagged endogen...
In simultaneous equations model, multicollinearity and status of identification of the equations hav...
This paper introduces a semi-parametric bootstrapping approach to Bayesian analysis of structural pa...
A bootstrap simulation approach was used to generate values for endogenous variables of a simultaneo...
The article is devoted to the interrelation between methods of estimating parameters of simultaneous...
One of the assumptions of Classical Linear Regression Model (CLRMA), is that the regress...
This paper outlines an approach to Bayesian semiparametric regression in multiple equation models wh...
We propose two simple bias reduction procedures that apply to estimators in a general static simulta...
This paper develops estimators for simultaneous equations with spatial autoregressive or spatial mov...
Diffuse priors lead to pathological posterior behavior when used in Bayesian analyses of Simultaneou...
The performances of two full information techniques, Three Stage Least Squares (3SLS) and Full Infor...
Using Markov Chain Monte Carlo algorithms within the limited information Bayesian framework, we esti...
This paper studies the use of the Jeffreys’ prior in Bayesian analysis of the simultaneous equations ...
This paper outlines an approach to Bayesian semiparametric regression in multiple equation models wh...
nonlinear simultaneous equations ABSTRACT: This paper outlines an approach to Bayesian semiparametri...