Efficiency and Robustness of a Resampling M-Estimator in the Linear Model
In the literature, there are basically two kinds of resampling methods for least squares estimation in linear models; the E-type (the efficient ones like the classical bootstrap), which is more efficient when error variables are homogeneous, and the R-type (the robust ones like the jackknife), which is more robust for heterogeneous errors. However, for M-estimation of a linear model, we find a counterexample showing that a usually E-type method is less efficient than an R-type method when error variables are homogeneous. In this paper, we give sufficient conditions under which the classification of the two types of the resampling methods is still true.
Year of publication: |
2001
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Authors: | Hu, Feifang |
Published in: |
Journal of Multivariate Analysis. - Elsevier, ISSN 0047-259X. - Vol. 78.2001, 2, p. 252-271
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Publisher: |
Elsevier |
Keywords: | bootstrap jackknife M-estimator resampling method variance estimations E-type R-type |
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