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Robustness of Several Estimators of the ACF of AR(1) Process With Non-Gaussian Errors

机译:具有非高斯误差的AR(1)过程ACF的几个估计的鲁棒性

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The autocorrelation function (ACF) plays an important role in the context of ARMA modeling, especially for their identification and estimation. This study considers the robust estimation of the ACF of the AR(1) model if the white noise (WN) process is non-Gaussian. Three estimators including the ordinary moment estimator and two other (robust) estimators are considered. The impacts of the deviation from normality of the WN process on those estimators in terms of bias, MSE and distribution via Monte-Carlo simulation are examined. The empirical distribution of those estimators when the errors are normal, t, Cauchy and exponential are studied. Results show that the moment estimator is more affected by the change of the white noise distribution than other considered estimators.
机译:自相关函数(ACF)在ARMA建模中起着重要作用,尤其是在其识别和估计方面。如果白噪声(WN)过程是非高斯的,则本研究考虑了AR(1)模型的ACF的鲁棒估计。考虑了三个估计器,包括普通矩估计器和两个其他(稳健)估计器。通过蒙特卡洛模拟,考察了偏离WN过程正态性对偏倚,MSE和分布方面的估计量的影响。研究了当误差为正态,t,柯西和指数时这些估计量的经验分布。结果表明,矩估计量比其他考虑的估计量受白噪声分布变化的影响更大。

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