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Weighted denoised minimum distance estimation in a regression model with autocorrelated measurement errors

机译:具有自相关测量误差的回归模型中的加权去噪最小距离估计

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This paper deals with the linear regression model with measurement errors in both response and covariates. The variables are observed with errors together with an auxiliary variable, such as time, and the errors in response are autocorrelated. We propose a weighted denoised minimum distance estimator (WDMDE) for the regression coefficients. The consistency, asymptotic normality, and strong convergence rate of the WDMDE are proved. Compared with the usual denoised least squares estimator (DLSE) in the previous literature, the WDMDE is asymptotically more efficient in the sense of having smaller variances. It also avoids undersmoothing the regressor functions over the auxiliary variable, so that data-driven optimal choice of the bandwidth can be used. Furthermore, we consider the fitting of the error structure, construct the estimators of the autocorrelation coefficients and the error variances, and derive their large-sample properties. Simulations are conducted to examine the finite sample performance of the proposed estimators, and an application of our methodology to analyze a set of real data is illustrated as well.
机译:本文处理的是在响应和协变量中都存在测量误差的线性回归模型。观察到的变量带有错误以及辅助变量(例如时间),并且响应中的错误是自相关的。我们为回归系数提出了一个加权的去噪最小距离估计器(WDMDE)。证明了WDMDE的一致性,渐近正态性和强收敛性。与先前文献中通常的去噪最小二乘估计器(DLSE)相比,WDMDE在方差较小的意义上渐近地更有效。它还避免了辅助变量上回归函数的平滑性不足,因此可以使用数据驱动的带宽最佳选择。此外,我们考虑误差结构的拟合,构造自相关系数和误差方差的估计量,并推导它们的大样本特性。进行了仿真以检验所提出估计量的有限样本性能,并且还说明了我们的方法在分析一组真实数据中的应用。

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