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Linear restrictions and two step least squares with applications
Authors:Guido E del Pino
Institution:Departamento de Estardistica, P. Universidad Católica de Chile, Casilla 114-D, Santiago, Chile
Abstract:In this paper we consider the full rank regression model with arbitrary covariance matrix: Y = + ε. It is shown that the effect of restricting the information Y to T = AY may be analyzed through an associatedi regression problem which is amenable to solution by two step least squares. The results are applied to the important case of missing observations, where some classical results are rederived.
Keywords:linear models  two step least squares  influential data  missing data  dummy variables
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