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Robust estimation of crosscovariance function in the presence of outliers for large sample series

机译:大样本序列存在异常值时对交叉协方差函数的鲁棒估计

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This paper considers the effect of outliers on cross covariance as model identification and specification tool. We established that outliers in series significantly affect the mean of cross-covariance function (CCF). For large samples, the asymptotic-convergence of cross-covariance function expectations are infested if the original series is classified as 2-dimensional random fields in the presence of outliers. Robust estimates of cross-covariance function that accommodate outliers are proposed. Analytically, the proposed Jacknife (JK) estimate reduced the bias in the conventional method (CM) of estimation by 50%. When the upper bound of the outlier infested part of JK estimate is constrained to the number of outliers in the series, the new Jacknife estimate (NJK) completely removes the outlier infested bias in CM. The empirical illustration with real-life data showed that NJK estimates have lowest standard errors compared with CM and JK and decay with increase in lag.
机译:本文将离群值对交叉协方差的影响视为模型识别和指定工具。我们建立了一系列离群值显着影响交叉协方差函数(CCF)的均值。对于大样本,如果在存在异常值的情况下将原始序列分类为二维随机域,则交叉协方差函数期望值的渐近收敛会受到影响。提出了适应异常值的交叉协方差函数的鲁棒估计。从分析上看,拟议的Jacknife(JK)估算将传统估算方法(CM)的估算偏差降低了50%。当JK估计值的异常值受感染部分的上限受序列中异常值的数量限制时,新的Jacknife估计值(NJK)完全消除了CM中异常值受感染的偏差。带有实际数据的经验表明,与CM和JK相比,NJK估计的标准误最低,随着滞后的增加而衰减。

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