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Small area quantile estimation via spline regression and empirical likelihood

机译:通过样条回归和经验似然估计小面积分位数

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This paper studies small area quantile estimation under a unit level non-parametric nested-error regression model. We assume the small area specific error distributions satisfy a semi-parametric density ratio model. We fit the non-parametric model via the penalized spline regression method of Opsomer, Claeskens, Ranalli, Kauermann and Breidt (2008). Empirical likelihood is then applied to estimate the parameters in the density ratio model based on the residuals. This leads to natural area-specific estimates of error distributions. A kernel method is then applied to obtain smoothed error distribution estimates. These estimates are then used for quantile estimation in two situations: one is where we only have knowledge of covariate power means at the population level, the other is where we have covariate values of all sample units in the population. Simulation experiments indicate that the proposed methods for small area quantiles estimation work well for quantiles around the median in the first situation, and for a broad range of the quantiles in the second situation. A bootstrap mean square error estimator of the proposed estimators is also investigated. An empirical example based on Canadian income data is included.
机译:本文研究了基于单元级非参数嵌套误差回归模型的小面积分位数估计。我们假设小面积特定误差分布满足半参数密度比模型。我们通过Opsomer,Claeskens,Ranalli,Kauermann和Breidt(2008)的惩罚样条回归方法拟合了非参数模型。然后根据残差将经验似然应用于估计密度比模型中的参数。这导致误差分布的自然区域特定估计。然后应用核方法以获得平滑的误差分布估计。然后,将这些估计值用于两种情况下的分位数估计:一种是仅了解总体水平上的协变量功效平均值,另一种是我们具有总体中所有样本单位的协变量值。仿真实验表明,所提出的小面积分位数估计方法在第一种情况下适用于中位数附近的分位数,而在第二种情况下适用于范围广泛的分位数。还研究了所提出的估计器的自举均方误差估计器。包括一个基于加拿大收入数据的经验示例。

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