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Nonparametric estimation of mean-squared prediction error in nested-error regression models

机译:嵌套误差回归模型中均方预测误差的非参数估计

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摘要

Nested-error regression models are widely used for analyzing clustered data. For example, they are often applied to two-stage sample surveys, and in biology and econometrics. Prediction is usually the main goal of such analyses, and mean-squared prediction error is the main way in which prediction performance is measured. In this paper we suggest a new approach to estimating mean-squared prediction error. We introduce a matched-moment, double-bootstrap algorithm, enabling the notorious underestimation of the naive mean-squared error estimator to be substantially reduced. Our approach does not require specific assumptions about the distributions of errors. Additionally, it is simple and easy to apply. This is achieved through using Monte Carlo simulation to implicitly develop formulae. which, in a more conventional approach, would be derived laboriously by mathematical arguments.
机译:嵌套错误回归模型被广泛用于分析聚类数据。例如,它们通常应用于两阶段样本调查以及生物学和计量经济学。预测通常是此类分析的主要目标,而均方预测误差是衡量预测性能的主要方法。在本文中,我们建议了一种估计均方预测误差的新方法。我们引入了一个匹配矩,双自举算法,使天真的均方误差估计器的臭名昭著的低估大大降低了。我们的方法不需要关于错误分布的特定假设。此外,它简单易用。这是通过使用蒙特卡洛模拟隐式开发公式来实现的。在较传统的方法中,可以通过数学论证费力地得出。

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