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首页> 外文期刊>International journal of computing science and mathematics >Multivariate generalised gamma kernel density estimators and application to non-negative data
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Multivariate generalised gamma kernel density estimators and application to non-negative data

机译:多变量通用伽马核密度估计和非负数据的应用

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摘要

This paper proposes a classical multivariate generalised gamma (GG) kernel estimator for probability density function (pdf) estimation in the context of multivariate nonnegative data. Then, we show that the multiplicative bias correction (MBC) techniques can be applied for multivariate GG kernel density estimator as in Funke and Kawka (2015). Some properties (bias, variance and mean integrated squared error) of the corresponding estimators are also provided. The choice of the vector of bandwidths is investigated by adopting the popular cross-validation technique. Finally, the performances of the classical and MBC estimator based on the family of GG kernels are illustrated by a simulation study and real data.
机译:本文提出了一种经典多变量广义伽马(GG)内核估计,用于多变量非负数据的上下文中的概率密度函数(PDF)估计。然后,我们表明乘法偏压校正(MBC)技术可以应用于Funke和Kawka(2015)中的多元GG核密度估计器。还提供了相应估算器的一些属性(偏差,方差和平均集成方形误差。通过采用流行的交叉验证技术来研究带宽的载体的选择。最后,通过模拟研究和实际数据说明了基于GG内核系列的经典和MBC估计的性能。

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