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HETEROSCEDASTIC NESTED ERROR REGRESSION MODELS WITH VARIANCE FUNCTIONS

机译:异镜嵌套误差回归模型具有方差函数

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摘要

The nested error regression model is a useful tool for analyzing clustered (grouped) data, especially so in small area estimation. The classical' nested error regression model assumes normality of random effects and error terms, and homoscedastic variances. These assumptions are often violated in applications and more flexible models are required. This article proposes a nested error regression model with heteroscedastic variances, where the normality for the underlying distributions is not assumed. We propose the structure of heteroscedastic variances by using some specified variance functions and some covariates with unknown parameters. Under this setting, we construct moment-type estimators of model parameters and some asymptotic properties including asymptotic biases and variances are derived. For predicting linear quantities, including random effects, we suggest the empirical best linear unbiased predictors, and the second-order unbiased estimators of mean squared errors are derived in closed form. We investigate the proposed method with simulation and empirical studies.
机译:嵌套错误回归模型是一个有用的工具,用于分析聚类(分组)数据,尤其是在小区区域估计中。经典的“嵌套错误回归模型”假定随机效应和错误术语的正常性,以及同性恋差异。这些假设通常违反应用程序,并且需要更灵活的型号。本文提出了一种嵌套错误回归模型,具有异源型差异,其中没有假设底层分布的正常性。我们通过使用一些指定的方差函数和一些具有未知参数的协变量提出异源型差异的结构。在此设置下,我们构建了模型参数的矩型估计和一些渐近属性,包括渐近偏差和差异。为了预测线性量,包括随机效应,我们建议经验性最佳线性无偏见的预测因子,并且平均方形误差的二阶无偏估计以封闭形式导出。我们研究了具有模拟和实证研究的提出方法。

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