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Bias reduction in kernel density estimation via Lipschitz condition

机译:通过Lipschitz条件减少核密度估计的偏差

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摘要

In this paper we propose a new nonparametric kernel-based estimator for a density function f which achieves bias reduction relative to the classical Rosenblatt-Parzen estimator. Contrary to some existing estimators that provide for bias reduction, our estimator has a full asymptotic characterisation including uniform consistency and asymptotic normality. In addition, we show that bias reduction can be achieved without the disadvantage of potential negativity of the estimated density - a deficiency that results from using higher order kernels. Our results are based on imposing global Lipschitz conditions on f and defining a novel corresponding kernel. A Monte Carlo study is provided to illustrate the estimator's finite sample performance.
机译:在本文中,我们为密度函数f提出了一种新的基于非参数核的估计器,该估计器相对于经典Rosenblatt-Parzen估计器实现了偏差减小。与提供偏差减少的一些现有估计器相反,我们的估计器具有完整的渐近特征,包括一致的一致性和渐近正态性。另外,我们表明可以实现偏差减小,而不会存在估计密度可能为负的缺点-由使用高阶核导致的缺陷。我们的结果基于对f施加全局Lipschitz条件并定义了一个新颖的相应内核。提供了蒙特卡洛研究,以说明估计器的有限样本性能。

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