The bootstrap: Some large sample theory and connections with robustness |
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Authors: | William C. Parr |
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Affiliation: | Department of Statistics, University of Florida, Gainesville, FL 32611, USA |
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Abstract: | The bootstrap, discussed by Efron (1979, 1981), is a powerful tool for the nonparametric estimation of sampling distributions and asymptotic standard errors. We demonstrate consistency of the bootstrap distribution estimates for a general class of robust differentiable statistical functionals. Our conditions for consistency of the bootstrap are variants of previously considered criteria for robustness of the associated statistics. A general example shows that, for almost any location statistic, consistency of the bootstrap variance estimator requires a tail condition on the distribution from which samples are taken. A modification of Efron's estimator of standard error is shown to circumvent this problem. |
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Keywords: | bootstrap continuity differentiable statistical functionals Fréchet differentiability robustness strong laws variance estimation |
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