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A weighted least-squares cross-validation bandwidth selector for kernel density estimation

机译:用于内核密度估计的加权最小二乘交叉验证带宽选择器

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摘要

Since the late 1980s, several methods have been considered in the literature to reduce the sample variability of the least-squares cross-validation bandwidth selector for kernel density estimation. In this article, a weighted version of this classical method is proposed and its asymptotic and finite-sample behavior is studied. The simulation results attest that the weighted cross-validation bandwidth performs quite well, presenting a better finite-sample performance than the standard cross-validation method for "easy-to-estimate" densities, and retaining the good finite-sample performance of the standard cross-validation method for "hard-to-estimate" ones.
机译:自20世纪80年代后期以来,在文献中已经考虑了几种方法,以降低最小二乘跨验证带宽选择器的样本可变性,用于内核密度估计。在本文中,提出了这种经典方法的加权版本,并研究了其渐近和有限样本行为。仿真结果证明了加权交叉验证带宽表现得很好,呈现比“易于估计”密度的标准交叉验证方法更好的有限样本性能,并保留标准的良好有限样本性能“难以估计”的交叉验证方法。

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