Robust estimation in the linear model with asymmetric error distributions
In the linear model Xn - 1 = Cn - p[theta]p - 1 + En - 1, Huber's theory of robust estimation of the regression vector [theta]p - 1 is adapted for two models for the partially specified common distribution F of the i.i.d. components of the error vector En - 1. In the first model considered, the restriction of F to a set [-a0, b0] is a standard normal distribution contaminated, with probability [var epsilon], by an unknown distribution symmetric about 0. In the second model, the restriction of F to [-a0, b0] is completely specified (and perhaps asymmetrical). In both models, the distribution of F outside the set [-a0, b0] is completely unspecified. For both models, consistent and asymptotically normal M-estimators of [theta]p - 1 are constructed, under mild regularity conditions on the sequence of design matrices {Cn - p}. Also, in both models, M-estimators are found which minimize the maximal mean-squared error. The optimal M-estimators have influence curves which vanish off compact sets.
Year of publication: |
1986
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Authors: | Collins, J. R. ; Sheahan, J. N. ; Zheng, Z. |
Published in: |
Journal of Multivariate Analysis. - Elsevier, ISSN 0047-259X. - Vol. 20.1986, 2, p. 220-243
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Publisher: |
Elsevier |
Keywords: | robust estimation robust regression M-estimators linear model asymmetric distributions |
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