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On a principal component two-parameter estimator in linear model with autocorrelated errors

机译:具有自相关误差的线性模型中的主成分两参数估计量

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This paper is concerned with autocorrelation in errors and multicollinearity among the regressors in linear regression model. To reduce these effects of autocorrelation and multicollinearity, we generalize a principal component two-parameter (PCTP) estimator in the linear regression model with correlated or heteroscedastic errors. Then we give detailed comparisons between those estimators that can be derived from the PCTP estimator such as the generalized least squares estimator, the principal components regression estimator, the estimator and the estimator by the mean squared error (MSE) matrix criterion. Also, we obtain the conditions for the superiority of one estimator over the other. Furthermore, we conduct a Monte Carlo simulation study to compare these estimators under the MSE criterion.
机译:本文涉及线性回归模型中回归变量之间的误差和多重共线性的自相关。为了减少自相关和多重共线性的这些影响,我们在具有相关误差或异方差误差的线性回归模型中推广了主成分两参数(PCTP)估计量。然后,我们可以从PCTP估计器得出的估计器之间进行详细比较,例如广义最小二乘估计器,主成分回归估计器,估计器和通过均方误差(MSE)矩阵准则的估计器。同样,我们获得了一个估计量优于另一个估计量的条件。此外,我们进行了蒙特卡洛模拟研究,以根据MSE标准比较这些估计量。

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