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Plug-in bandwidth choice for estimation of nonparametric part in partial linear regression models with strong mixing errors

机译:用于估计具有强混合误差的部分线性回归模型中非参数部分的插件带宽选择

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摘要

Consider a regression model where the regression function is the sum of a linear and a nonparamotric component. Assuming that, the errors of the model follow a stationary strong mixing process with mean zero, the problem of bandwidth selection for a kernel estimator of the nonparametric component is addressed here. We obtain an asymptotic expression for an optimal bandwidth and we propose to use a plug-in methodology in order to estimate this bandwidth through preliminary estimates of the unknown quantities. Asymptotic optimality for the plug-in bandwidth is established.
机译:考虑一个回归模型,其中回归函数是线性和非参数分量的总和。假设模型的误差遵循均值为零的平稳强混合过程,则本文针对非参数分量的核估计器选择带宽的问题。我们获得了最佳带宽的渐近表达式,并且我们建议使用一种插件方法,以便通过对未知数量的初步估算来估算此带宽。建立了插件带宽的渐近最优性。

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