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Robust estimation of periodic autoregressive processes in the presence of additive outliers

机译:在存在附加异常值的情况下对周期自回归过程的鲁棒估计

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摘要

This paper suggests a robust estimation procedure for the parameters of the periodic AR (PAR) models when the data contains additive outliers. The proposed robust methodology is an extension of the robust scale and covariance functions given in, respectively, Rousseeuw and Croux (1993) [28], and Ma and Genton (2000) [23] to accommodate periodicity. These periodic robust functions are used in the Yule-Walker equations to obtain robust parameter estimates. The asymptotic central limit theorems of the estimators are established, and an extensive Monte Carlo experiment is conducted to evaluate the performance of the robust methodology for periodic time series with finite sample sizes. The quarterly Fraser River data was used as an example of application of the proposed robust methodology. All the results presented here give strong motivation to use the methodology in practical situations in which periodically correlated time series contain additive outliers.
机译:当数据包含累加离群值时,本文提出了针对周期性AR(PAR)模型参数的鲁棒估计程序。所提出的鲁棒方法是对Rousseeuw和Croux(1993)[28]以及Ma和Genton(2000)[23]中给出的鲁棒尺度和协方差函数的扩展,以适应周期性。在Yule-Walker方程中使用这些周期性的鲁棒函数来获得鲁棒的参数估计。建立了估计器的渐近中心极限定理,并进行了广泛的蒙特卡洛实验,以评估具有有限样本量的周期性时间序列的鲁棒方法的性能。以弗雷泽河季度数据为例,说明了所提出的鲁棒方法的应用。此处介绍的所有结果都为在周期性相关时间序列包含累加异常值的实际情况下使用该方法提供了强大的动力。

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