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Semiparametric Density Deconvolution

机译:半参数密度反卷积

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A new semiparametric method for density deconvolution is proposed, based on a model in which only the ratio of the unconvoluted to convoluted densities is specified parametrically. Deconvolution results from reweighting the terms in a standard kernel density estimator, where the weights are defined by the parametric density ratio. We propose that in practice, the density ratio be modelled on the log-scale as a cubic spline with a fixed number of knots. Parameter estimation is based on maximization of a type of semiparametric likelihood. The resulting asymptotic properties for our deconvolution estimator mirror the convergence rates in standard density estimation without measurement error when attention is restricted to our semiparametric class of densities. Furthermore, numerical studies indicate that for practical sample sizes our weighted kernel estimator can provide better results than the classical non-parametric kernel estimator for a range of densities outside the specified semiparametric class.
机译:提出了一种新的半卷积密度反卷积方法,该模型基于仅参数化地指定未卷积密度与卷积密度之比的模型。去卷积是通过对标准内核密度估计器中的项进行加权而得出的,其中权重由参数密度比定义。我们建议在实践中,将密度比在对数刻度上建模为具有固定节数的三次样条。参数估计基于一种半参数似然的最大化。当注意力仅限于半参数密度类别时,反卷积估计器的最终渐近性质反映了标准密度估计中的收敛速度,而没有测量误差。此外,数值研究表明,对于实际的样本量,在指定的半参数类别之外的一系列密度下,我们的加权核估计量可以提供比经典非参数核估计量更好的结果。

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