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Density deconvolution for generalized skew-symmetric distributions

机译:广义偏光分布的密度去卷积

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The density deconvolution problem is considered for random variables assumed to belong to the generalized skew-symmetric (GSS) family of distributions. The approach is semiparametric in that the symmetric component of the GSS distribution is assumed known, and the skewing function capturing deviation from the symmetric component is estimated using a deconvolution kernel approach. This requires the specification of a bandwidth parameter. The mean integrated square error (MISE) of the GSS deconvolution estimator is derived, and two bandwidth estimation methods based on approximating the MISE are also proposed. A generalized method of moments approach is also developed for estimation of the underlying GSS location and scale parameters. Simulation study results are presented including a comparing the GSS approach to the nonparametric deconvolution estimator. For most simulation settings considered, the GSS estimator is seen to have performance superior to the nonparametric estimator.
机译:假设属于广义偏光(GSS)的分布系列的随机变量考虑了密度折叠问题。该方法是半偏法,因为假设GSS分布的对称分量已知,并且使用解构内核方法估计与对称分量的偏斜函数捕获偏差。这需要规范带宽参数。 GSS解卷积估计器的平均集成方误差(MISE)是推导的,并且还提出了基于近似MISE的两个带宽估计方法。还开发了一种普遍的瞬间方法,用于估计底层GSS位置和比例参数。提出了模拟研究结果,包括将GSS方法与非参数解卷积估计器的比较。对于考虑的大多数仿真设置,GSS估计器被认为具有优于非参数估计器的性能。

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