Notes on Pearson residuals and weighted likelihood estimating equations
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In these notes we show that the Pearson residuals (PR) [Lindsay, B.G., 1994. Efficiency versus robustness: the case for minimum Hellinger distance and related methods. Ann. Statist. 22, 1018-1114.] have a natural asymptotic lower bound under the gross error model which can be used in the problem of choosing a root when multiple roots are present in the weighted likelihood estimating equations. Further, we show through an example how the minimum of the PR plays an important role in the robust estimation approach based on weighted likelihood.
[1] Bruce G. Lindsay,et al. The residual adjustment function and weighted likelihood: a graphical interpretation of robustness of minimum disparity estimators , 2002 .
[2] Ross Ihaka,et al. Gentleman R: R: A language for data analysis and graphics , 1996 .
[3] Marianthi Markatou,et al. Weighted Likelihood Equations with Bootstrap Root Search , 1998 .
[4] B. Lindsay. Efficiency versus robustness : the case for minimum Hellinger distance and related methods , 1994 .