This paper compares numerically the asymptotic distributions of parameter estimates and test statistics associated with two estimation techniques: (a) a limited-information one, which uses instrumental variables to estimate a single equation [Hansen and Singleton (1982)], and (b) a full-information one, which uses a procedure asymptotically equivalent to maximum likelihood to simultaneously estimate multiple equations [Hansen and Sargent (1980)]. The paper compares the two with respect to both (1) asymptotic efficiency under the null hypothesis of no misspecification, and (2) asymptotic bias and power in the presence of certain local alternatives. It is found that (1) full-information standard errors are only moderately smaller than limited...
This paper introduces a new readily programmable single-equation errors in variables estimation proc...
Most rational expectations models involve equations in which the dependent variable is a function of...
In designing Monte Carlo simulation studies for analyzing finite sample properties of econometric in...
This paper compares numerically the asymptotic distributions of parameter estimates and test statist...
This article considers the theory of the estimation and testing of a model with one endogenous vari...
A computationally feasible method for the full information maximum-likelihood estimation of models w...
A computationally feasible method for the full information maximum likelihood estimation of models w...
The aim of this work is to study – via a Monte Carlo experiment – the small sample behaviour of Full...
In completely specified models, where explicit formulae are derivable for the probabilities of obser...
This thesis is concerned with the single-equation errors-in-variables estimation of rational expecta...
In structural equation modeling software, either limited-information (bivariate proportions) or full...
In structural equation modeling software, either limited-information (bivariate proportions) or full...
Most rational expectations models involve equations in which the dependent variable is a function of...
In simple static linear simultaneous equation models the empirical distributions ofIV and OLS are ex...
A Monte Carlo study was designed to compare the performance of four missing data methods in structur...
This paper introduces a new readily programmable single-equation errors in variables estimation proc...
Most rational expectations models involve equations in which the dependent variable is a function of...
In designing Monte Carlo simulation studies for analyzing finite sample properties of econometric in...
This paper compares numerically the asymptotic distributions of parameter estimates and test statist...
This article considers the theory of the estimation and testing of a model with one endogenous vari...
A computationally feasible method for the full information maximum-likelihood estimation of models w...
A computationally feasible method for the full information maximum likelihood estimation of models w...
The aim of this work is to study – via a Monte Carlo experiment – the small sample behaviour of Full...
In completely specified models, where explicit formulae are derivable for the probabilities of obser...
This thesis is concerned with the single-equation errors-in-variables estimation of rational expecta...
In structural equation modeling software, either limited-information (bivariate proportions) or full...
In structural equation modeling software, either limited-information (bivariate proportions) or full...
Most rational expectations models involve equations in which the dependent variable is a function of...
In simple static linear simultaneous equation models the empirical distributions ofIV and OLS are ex...
A Monte Carlo study was designed to compare the performance of four missing data methods in structur...
This paper introduces a new readily programmable single-equation errors in variables estimation proc...
Most rational expectations models involve equations in which the dependent variable is a function of...
In designing Monte Carlo simulation studies for analyzing finite sample properties of econometric in...