General m-esttmators and applications to bounded influence estimation for non-linear regression |
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Authors: | Ricardo Fraiman |
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Affiliation: | Universidad de Buenos Aires , Buenos Aires, Argentina |
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Abstract: | In this paper, we study the M-estimators in the case that λF:(β)=EF:(φ(Z,β))=0 has more than one solution, We show that the numerical iterative procedures converge and that the resulting estimators are consistent and asymptotically normal. We apply them to the non-linear regression models, and then, we find an optimal M-estimate among those that have bounded gross error sensitivity. |
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Keywords: | M-estimator bounded influence curve numerical iterative procedures non-linear regression |
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