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首页> 外文期刊>Journal of nonparametric statistics >A bias-reduced approach to density estimation using Bernstein polynomials
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A bias-reduced approach to density estimation using Bernstein polynomials

机译:使用Bernstein多项式的偏倚减少方法进行密度估计

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摘要

Mixtures of Beta densities have led to different methods of density estimation for univariate data assumed to have compact support. One such method relies on Bernstein polynomials and leads to good approximation properties for the resulting estimator of the underlying density f. In particular, if f is twice continuously differentiable, this estimator can be shown to attain the optimal nonparametric convergence rate of n~(-4/5) in terms of mean integrated squared error (MISE). However, this rate cannot be improved upon directly when relying on the usual Bernstein polynomials, no matter what other assumptions are made on the smoothness of f.rnIn this note, we show how a simple method of bias reduction can lead to a Bernstein-based estimator that does achieve a higher rate of convergence. Precisely, we exhibit a bias-corrected estimator that achieves the optimal nonparametric MISE rate of n~(-8/9) when the underlying density f is four times continuously differentiable on its support.
机译:Beta密度的混合导致对假定具有紧凑支持的单变量数据进行密度估计的不同方法。一种这样的方法依赖于伯恩斯坦多项式,并为基础密度f的最终估计量带来了良好的近似特性。特别地,如果f是两次连续可微的,则可以证明该估计器以均方平方误差(MISE)的形式获得n〜(-4/5)的最优非参数收敛速度。但是,无论对f.rn的光滑度做出什么其他假设,在依靠常规伯恩斯坦多项式时都不能直接提高该比率。在此注释中,我们说明了减少偏倚的简单方法如何导致基于伯恩斯坦的确实达到较高收敛速度的估计量。精确地,当基础密度f在其支持下连续可微调四次时,我们展示了一种偏差校正估计量,该估计量可实现n〜(-8/9)的最佳非参数MISE率。

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