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Nonparametric multiplicative bias correction for kernel-type density estimation on the unit interval

机译:基于单位间隔的核型密度估计的非参数乘性偏差校正

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This paper demonstrates that two classes of multiplicative bias correction (MBC) techniques, originally proposed for density estimation using symmetric second-order kernels by Terrell and Scott (1980) and Jones et al. (1995), can be applied to density estimation using the beta and modified beta kernels. It is shown that, under sufficient smoothness of the true density, both MBC techniques reduce the order of magnitude in bias, whereas the order of magnitude in variance remains unchanged. Accordingly, mean squared errors of these MBC estimators achieve a faster convergence rate of O (n(-8/9)) for the interior part, when best implemented. Furthermore, the estimators always generate nonnegative density estimates by construction. To implement the MBC estimators, a plug-in smoothing parameter choice method is proposed. Monte Carlo simulations indicate good finite sample performance of the estimators.
机译:本文证明了Terrell和Scott(1980)以及Jones等人最初提出的使用对称二阶内核估计密度的两类乘积偏差校正(MBC)技术。 (1995),可以将其应用于使用beta和经过改进的beta内核的密度估计。结果表明,在真实密度足够平滑的情况下,两种MBC技术均可降低偏差的数量级,而方差的数量级则保持不变。因此,当最佳实现时,这些MBC估计量的均方误差对于内部部分实现了更快的O(n(-8/9))收敛速度。此外,估计器始终通过构造生成非负密度估计。为了实现MBC估计器,提出了一种插件平滑参数选择方法。蒙特卡洛模拟表明估计器具有良好的有限样本性能。

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