Estimation of Regression Coefficients Subject to Exact Linear Restrictions when some Observations are Missing and Balanced Loss Function is Used
by H. Toutenburg
ftp://ftp.stat.uni-muenchen.de/pub/sfb386/paper163.ps.Z
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Abstract:
This article considers a linear regression model when a set of exact linear restrictions binding the coefficients is available and some observations on the study variable are missing. Estimators for the vectors of regression coefficients are presented and their superiority properties with respect to the criteria of the variance covariance matrix and the risk under balanced loss functions are analyzed. Key Words Balanced loss function, exact restrictions, missing observations 1
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