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On Semiparametric EV Models with Serially Correlated Errors in Both Regression Models and Mismeasured Covariates

机译:回归模型和协方差均错的具有序列相关误差的半参数EV模型

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摘要

We consider inference for a semiparametric regression model where some covariates are measured with errors, and the errors in both the regression model and the mismeasured covariates are serially correlated. We propose a weighted estimating equations-based estimator (WEEBE) for the regression coefficients. We show that the WEEBE is asymptotically more efficient than the estimators that neglect the serial correlations. This is an interesting new finding since earlier results in the statistical literature have shown that the weighted estimation is not as efficient as the unweighted estimation when the measurement errors and serially correlated errors of the regression models exist simultaneously (Biometrics, 49, 1993, 1262; Technometrics, 42, 2000, 137). The proposed WEEBE does not require undersmoothing the regressor functions in order to make it attain the rout-n consistency. Simulation studies show that the proposed estimator has nice finite sample properties. A real data set is used to illustrate the proposed method.
机译:我们考虑半参数回归模型的推论,其中一些协变量带有误差,并且回归模型中的误差和度量不正确的协变量都是串行相关的。我们为回归系数提出了一个基于加权估计方程的估计器(WEEBE)。我们表明,WEEBE比忽略串行相关性的估计量渐近有效。这是一个有趣的新发现,因为统计文献中的早期结果表明,当回归模型的测量误差和序列相关误差同时存在时,加权估计不如未加权估计有效(Biometrics,49,1993,1262; Technometrics,42,2000,137)。拟议的WEEBE不需要使回归函数的功能不平滑即可使其达到Rout-n一致性。仿真研究表明,该估计器具有良好的有限样本属性。实际数据集用于说明所提出的方法。

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