Parameter selection in modified histogram estimates

STATISTICS(2007)

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摘要
A multivariate modified histogram density estimate depending on a reference density g and a partition P has been proved to have good consistency properties according to several information theoretic criteria. Given an i.i.d. sample, we show how to select automatically both g and P so that the expected L I error of the corresponding selected estimate is within a given constant multiple of the best possible error plus an additive term which tends to zero under mild assumptions. Our method is inspired by the combinatorial tools developed by Devroye and Lugosi [Devroye, L. and Lugosi, G., 2001, Combinatorial Methods in Density Estimation (New York, NY: Springer-Verlag)] and it includes a wide range of reference density and partition models. Results of simulations are also presented.
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关键词
modified histogram estimate,nonparametric estimation,partition,Vapnik-Chervonenkis dimension
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