The optimal Lp norm estimator in linear regression models |
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Authors: | H Nyquist |
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Institution: | University of Ume? , S-901 87 Ume?, Sweden |
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Abstract: | The least squares estimator is usually applied when estimating the parameters in linear regression models. As this estimator is sensitive to departures from normality in the residual distribution, several alternatives have been proposed. The Lp norm estimators is one class of such alternatives. It has been proposed that the kurtosis of the residual distribution be taken into account when a choice of estimator in the Lp norm class is made (i.e. the choice of p). In this paper, the asymtotic variance of the estimators is used as the criterion in the choice of p. It is shown that when this criterion is applied, other characteristics of the residual distribution than the kurtosis (namely moments of order p-2 and 2p-2) are important. |
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Keywords: | Lp nor estimates linear regression |
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