模型选择后小面积估计的统一蒙特卡罗折刀

Jiming Jiang, P. Lahiri, Thuan Nguyen
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引用次数: 18

摘要

研究了小面积估计中不确定测度的估计问题,在估计前先进行模型选择。提出了一种统一的蒙特卡罗折刀法,即McJack,用于估计均方预测误差的对数。我们证明了McJack的二阶无偏性,并通过包括仿真研究和实际数据分析在内的实证研究证明了McJack在模型选择后评估SAE不确定性方面的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Unified Monte-Carlo Jackknife for Small Area Estimation after Model Selection
We consider estimation of measure of uncertainty in small area estimation (SAE) when a procedure of model selection is involved prior to the estimation. A unified Monte-Carlo jackknife method, called McJack, is proposed for estimating the logarithm of the mean squared prediction error. We prove the second-order unbiasedness of McJack, and demonstrate the performance of McJack in assessing uncertainty in SAE after model selection through empirical investigations that include simulation studies and real-data analyses.
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