On Efficient Estimation and Correct Inference in Models with Generated Regressors: a General Approach |
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Authors: | Colin McKenzie,& Michael McAleer |
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Affiliation: | Osaka University,;University of Western Australia |
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Abstract: | Two approaches have been developed for deriving the properties of efficiency and consistency of standard errors of two step estimators of linear models containing current or lagged unobserved expectations of a single variable. One method is based on the derivatives of the likelihood function and information matrix, while the other uses the true covariance matrix of the disturbance vector when unknown parameters or variables are replaced by corresponding estimates. In this paper, the second approach is extended to cases where the structural equation is nonlinear and the model contains expectations of more than one variable or expectations of future variables. The properties of a frequently used estimator to deal with missing observations problems, a model involving a variance as an explanatory variable, and a recently developed estimator for autoregressive moving average models can be easily derived using the results of the paper. Methods for improving the efficiency of two step estimators are outlined. JEL Classification Number: C13 |
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Keywords: | Efficiency generated regressors inference rational expectations models two step estimation |
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