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Power-law cross-correlations estimation under heavy tails

机译:重尾下的幂律互相关估计

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We examine the performance of six estimators of the power-law cross-correlations-the detrended cross-correlation analysis, the detrending moving-average cross-correlation analysis, the height cross-correlation analysis, the averaged periodogram estimator, the cross-periodogram estimator and the local cross-Whittle estimator-under heavy-tailed distributions. The selection of estimators allows to separate these into the time and frequency domain estimators. By varying the characteristic exponent of the a-stable distributions which controls the tails behavior, we report several interesting findings. First, the frequency domain estimators are practically unaffected by heavy tails bias-wise. Second, the time domain estimators are upward biased for heavy tails but they have lower estimator variance than the other group for short series. Third, specific estimators are more appropriate depending on distributional properties and length of the analyzed series. In addition, we provide a discussion of implications of these results for empirical applications as well as theoretical explanations. (C) 2016 Elsevier B.V. All rights reserved.
机译:我们检查了幂律互相关的六个估计器的性能-趋势互相关分析,趋势动平均互相关分析,高度互相关分析,平均周期图估算器,周期图估算器以及重尾分布下的局部跨Whittle估计量。估计器的选择允许将它们分为时域和频域估计器。通过改变控制尾部行为的a稳定分布的特征指数,我们报告了一些有趣的发现。首先,频域估计器实际上不受偏向粗尾的影响。其次,时域估计量对于较重的尾巴有较高的偏见,但对于短序列而言,它们的估计量方差比另一组低。第三,根据分布特性和被分析序列的长度,特定估计量更为合适。此外,我们还讨论了这些结果对经验应用的影响以及理论解释。 (C)2016 Elsevier B.V.保留所有权利。

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