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商业调查的小区域估计:基于变换的单位级模型比较

Small area estimation for business surveys: a comparison of transformation-based unit level models

Journal of the Royal Statistical Society. Series C: Applied Statistics · 2026
被引 0
ABS 3

中文导读

研究了基于变换的单位级模型在商业调查小区域估计中的表现,比较了不同变换方法和偏差校正技术,发现经验最佳预测方法灵活且适应性强。

Abstract

Abstract Small area estimation methods are generally based on models which assume normal errors, but many types of data do not follow a normal distribution. Several approaches have been suggested to deal with skewed data, including transformations (with and without bias correction), robust models which are less affected by the tails of the distributions and building models directly with skewed error distributions. We investigate the properties of models for transformed data with a real dataset which mimics a structural business survey. This contributes to the understanding of which tools are best for small area estimation with skewed data. We investigate the sensitivity of results to different shift parameters (used to make methods practical when data contain zeroes) and transformation parameters. The empirical best predictor (EBP) approach is found to be a flexible way to fit transformation-based models without the need for development of bias adjustments in back transformation. We prefer the EBP log-shift and EBP dual power which have good performance in our example (noting that the variables affecting the weighting are included in the model) because of their adaptability to new datasets. The bias-corrected empirical best estimator has similar performance in our example but is tailored to the log transformation.

小区域估计商业调查数据变换偏态数据经验最佳预测