Robust Linear Calibration |
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Authors: | Christos P. Kitsos christine H. Müller |
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Affiliation: | Athens University of Business and Economics and Freie Universit?t , Berlin |
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Abstract: | We regard the simple linear calibration problem where only the response y of the regression line y = β0 + β1 t is observed with errors. The experimental conditions t are observed without error. For the errors of the observations y we assume that there may be some gross errors providing outlying observations. This situation can be modeled by a conditionally contaminated regression model. In this model the classical calibration estimator based on the least squares estimator has an unbounded asymptotic bias. Therefore we introduce calibration estimators based on robust one-step-M-estimators which have a bounded asymptotic bias. For this class of estimators we discuss two problems: The optimal estimators and their corresponding optimal designs. We derive the locally optimal solutions and show that the maximin efficient designs for non-robust estimation and robust estimation coincide. |
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Keywords: | AMS 1991 subject classifications 62J05 62F35 62G20 62K05 |
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