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Trimmed least squares estimator as best trimmed linear conditional estimator for linear regression model
Authors:Lin-An Chen  Peter Thompson
Institution:1. Institute of Statistics , National Chiao Tung University , Hsinchu, Taiwan;2. Mathematics Department , Wabash College , Crawfordsville, IN, 47933, U.S.A
Abstract:A class of trimmed linear conditional estimators based on regression quantiles for the linear regression model is introduced. This class serves as a robust analogue of non-robust linear unbiased estimators. Asymptotic analysis then shows that the trimmed least squares estimator based on regression quantiles ( Koenker and Bassett ( 1978 ) ) is the best in this estimator class in terms of asymptotic covariance matrices. The class of trimmed linear conditional estimators contains the Mallows-type bounded influence trimmed means ( see De Jongh et al ( 1988 ) ) and trimmed instrumental variables estimators. A large sample methodology based on trimmed instrumental variables estimator for confidence ellipsoids and hypothesis testing is also provided.
Keywords:Instrumental variables estimator  linear conditional estimator  linear regression  regression quantile  trimmed least squares estimator
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