Robust weights and designs for biased regression models: Least squares and generalized M-estimation

We consider an ‘approximately linear’ regression model, in which the mean response consists of a linear combination of fixed regressors and an unknown additive contaminant. Only the linear component can be modelled by the experimenter. We assume that the experimenter chooses design points and then e...

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Bibliographic Details
Published inJournal of statistical planning and inference Vol. 83; no. 2; pp. 395 - 412
Main Author Wiens, Douglas P.
Format Journal Article
LanguageEnglish
Published Lausanne Elsevier B.V 01.02.2000
New York,NY Elsevier Science
Amsterdam
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ISSN0378-3758
1873-1171
DOI10.1016/S0378-3758(99)00102-0

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Summary:We consider an ‘approximately linear’ regression model, in which the mean response consists of a linear combination of fixed regressors and an unknown additive contaminant. Only the linear component can be modelled by the experimenter. We assume that the experimenter chooses design points and then estimates the regression parameters by weighted least squares or by generalized M-estimation. For this situation we exhibit designs and weights which minimize scalar-valued functions of the covariance matrix of the regression estimates, subject to a requirement of unbiasedness. We report the results of a simulation study in which these designs/weights result in significant improvements, with respect to both bias and mean squared error, when compared to some common competitors.
ISSN:0378-3758
1873-1171
DOI:10.1016/S0378-3758(99)00102-0