Using the bootstrap to estimate mean squared error and select smoothing parameter in nonparametric problems (Q756327)

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scientific article; zbMATH DE number 4190931
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Using the bootstrap to estimate mean squared error and select smoothing parameter in nonparametric problems
scientific article; zbMATH DE number 4190931

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    Using the bootstrap to estimate mean squared error and select smoothing parameter in nonparametric problems (English)
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    1990
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    The paper is concerned with the clever idea of using bootstrap samples of essentially smaller size \(n_ 1\) than the size of the original sample n. More precisely, the author considers a bootstrap version \(f^*(\cdot | n_ 1,h_ 1)\) of the kernel density estimate \(\hat f(\cdot | n,h)\) and proves, in particular, that quantities like \[ (1)\quad E[\hat f(x| n_ 1,h_ 1)-f(x)]^ p,\text{ and } (2)\quad E[\hat f^*(x| n_ 1,h_ 1)-\hat f(x| n,h)]^ p \] (which obviously take account of both variance and bias of \(\hat f\) and \(\hat f^*)\) are close to each other for \(n_ 1<cn^{1-\delta}.\) The same statment concerning integral (in x) versions of (1) and (2) is proved. Some emphasis is on the problem of bootstrap estimation of a bias.
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    mean squared error
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    smoothing parameter
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    density estimation
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    bootstrap sample size
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    Lp-distances
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    nonparametric regression
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    tail parameter estimation
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    kernel density estimate
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    bootstrap estimation of a bias
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