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Transformation and Smoothing in Sample Survey Data

机译:样本调查数据中的变换和平滑

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We consider model-based prediction of a finite population total when a monotone transformation of the survey variable makes it appropriate to assume additive, homoscedastic errors. As the transformation to achieve this does not necessarily simultaneously produce an easily parameterized mean function, we assume only that the mean is a smooth function of the auxiliary variable and estimate it non-parametrically. The back transformation of predictions obtained on the transformed scale introduces bias which we remove using smearing. We obtain an asymptotic expansion for the prediction error which shows that prediction bias is asymptotically negligible and the prediction mean-squared error (MSE) using a non-parametric model remains in the same order as when a parametric model is adopted. The expansion also shows the effect of smearing on the prediction MSE and can be used to compute the asymptotic prediction MSE. We propose a model-based bootstrap estimate of the prediction MSE. The predictor produces competitive results in terms of bias and prediction MSE in a simulation study, and performs well on a population constructed from an Australian farm survey.
机译:当调查变量的单调变换适合假设加性,同调误差时,我们考虑基于模型的有限总体总数预测。由于为实现此目的而进行的变换不一定会同时产生易于参数化的均值函数,因此我们仅假设均值是辅助变量的平滑函数,并对其进行非参数估计。在转换后的规模上获得的预测值的反向转换引入了偏差,我们可以通过涂抹来消除偏差。我们获得了针对预测误差的渐近展开式,该展开式表明预测偏差在渐近可忽略不计,并且使用非参数模型的预测均方误差(MSE)保持与采用参数模型时相同的顺序。扩展还显示了拖影对预测MSE的影响,可用于计算渐近预测MSE。我们提出了预测MSE的基于模型的引导估计。在模拟研究中,预测器在偏倚和预测MSE方面产生竞争性结果,并且在根据澳大利亚农场调查构建的种群中表现良好。

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