One-step jackknife for M-estimators computed using Newton's method |
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Authors: | Jun Shao |
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Affiliation: | (1) Department of Mathematics, University of Ottawa, 585 King Edward, K1N 6N5 Ottawa, Ontario, Canada |
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Abstract: | To estimate the dispersion of an M-estimator computed using Newton's iterative method, the jackknife method usually requires to repeat the iterative process n times, where n is the sample size. To simplify the computation, one-step jackknife estimators, which require no iteration, are proposed in this paper. Asymptotic properties of the one-step jackknife estimators are obtained under some regularity conditions in the i.i.d. case and in a linear or nonlinear model. All the one-step jackknife estimators are shown to be asymptotically equivalent and they are also asymptotically equivalent to the original jackknife estimator. Hence one may use a dispersion estimator whose computation is the simplest. Finite sample properties of several one-step jackknife estimators are examined in a simulation study.The research was supported by Natural Sciences and Engineering Research Council of Canada. |
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Keywords: | Asymptotic equivalence asymptotic variance computation of jackknife estimator consistency iteration M-estimator one-step estimator |
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