Weighted Wilcoxon Estimators in Nonlinear Regression

Weighted Wilcoxon Estimators in Nonlinear Regression

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Article ID: iaor201524991
Volume: 55
Issue: 4
Start Page Number: 401
End Page Number: 420
Publication Date: Dec 2013
Journal: Australian & New Zealand Journal of Statistics
Authors: ,
Keywords: statistics: regression, simulation
Abstract:

In this paper, we consider the estimation of parameters of a general near regression model. An estimator that minimises the weighted Wilcoxon dispersion function is considered and its asymptotic properties established under mild regularity conditions similar to those used in least squares and least absolute deviations estimation. As in linear models, the procedure provides estimators that are robust and highly efficient. The estimates depend on the choice of a weight function and diagnostics which differentiate between nonlinear fits are provided along with appropriate benchmarks. The behavior of these estimates is discussed on a real data set. A simulation study verifies the robustness, efficiency and validity of these estimates over several error distributions including the normal and a family of contaminated normal distributions.

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