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Optimal convergence rates, Bahadur representation, and asymptotic normality of partitioning estimators

机译:最优收敛速度,Bahadur表示和分区估计量的渐近正态性

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This paper studies the asymptotic properties of partitioning estimators of the conditional expectation function and its derivatives. Mean-square and uniform convergence rates are established and shown to be optimal under simple and intuitive conditions. The uniform rate explicitly accounts for the effect of moment assumptions, which is useful in semiparametric inference. A general asymptotic integrated mean-square error approximation is obtained and used to derive an optimal plug-in tuning parameter selector. A uniform Bahadur representation is developed for linear functionals of the estimator. Using this representation, asymptotic normality is established, along with consistency of a standard-error estimator. The finite-sample performance of the partitioning estimator is examined and compared to other nonparametric techniques in an extensive simulation study
机译:本文研究了条件期望函数及其导数的分区估计的渐近性质。建立了均方和均匀收敛速度,并证明在简单直观的条件下最佳收敛速度。统一汇率明确考虑了矩假设的影响,这在半参数推论中很有用。获得了一般渐近积分均方误差近似值,并将其用于导出最佳插件调整参数选择器。为估计器的线性函数开发了统一的Bahadur表示。使用这种表示,建立渐近正态性以及标准误差估计量的一致性。在广泛的模拟研究中,研究了分区估计器的有限样本性能并将其与其他非参数技术进行了比较。

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