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Influence functions of the Spearman and Kendall correlation measures

机译:Spearman和Kendall相关测度的影响函数

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Nonparametric correlation estimators as the Kendall and Spearman correlation are widely used in the applied sciences. They are often said to be robust, in the sense of being resistant to outlying observations. In this paper we formally study their robustness by means of their influence functions and gross-error sensitivities. Since robustness of an estimator often comes at the price of an increased variance, we also compute statistical efficiencies at the normal model. We conclude that both the Spearman and Kendall correlation estimators combine a bounded and smooth influence function with a high efficiency. In a simulation experiment we compare these nonparametric estimators with correlations based on a robust covariance matrix estimator.
机译:非参数相关估计器(如Kendall和Spearman相关)在应用科学中被广泛使用。从抵抗外围观察的意义上说,它们通常被认为是健壮的。在本文中,我们通过影响函数和严重错误敏感性来正式研究它们的鲁棒性。由于估算器的鲁棒性通常是以增加方差为代价的,因此我们还计算了正常模型的统计效率。我们得出的结论是,Spearman和Kendall相关估计器都高效地结合了有限且平滑的影响函数。在模拟实验中,我们将这些非参数估计量与基于鲁棒协方差矩阵估计量的相关性进行比较。

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