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Properties of Transmetric Density Estimation

机译:传输密度估计的特性

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Transmetric density estimation is a generalization of kernel density estimation that is proposed in Hovda(2014) and Hovda (2016), This framework involves the possibility of making assumptions on the kernel of the distribution to improve convergence orders and to reduce the number of dimensions in the graphical display.? In this paper we show that several state-of-the-art nonparametric, semiparametric and even parametric methods are special cases of this formulation, meaning that there is a unified approach.?Moreover, it is shown that parameters can be trained using unbiased cross-validation.? When parameter estimation is included, the mean integrated squared error of the transmetric density estimator is lower than for the common kernel density estimator, when the number of dimensions is larger than two.
机译:传输密度估计是在Hovda(2014)和Hovda(2016)中提出的内核密度估计的概括,该框架涉及在分布核上进行假设的可能性,以改善收敛令并减少尺寸的数量 图形显示。? 在本文中,我们表明,若干最先进的非参数,半甲酰均匀的参数方法是这种配方的特殊情况,这意味着有一个统一的方法.?MOREOVER,显示参数可以使用非偏见的交叉训练参数 -验证。? 当包括参数估计时,当尺寸的数量大于两个时,传输密度估计器的平均集成平方误差低于共同内核密度估计器。

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