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Influence Functions Of Some Depth Functions, And Application To Depth-weighted L-statistics

机译:某些深度函数的影响函数及其在深度加权L统计量中的应用

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Depth functions are increasingly being used in building nonparametric outlier detectors and in constructing useful nonparametric statistics such as depth-weighted L-statistics (DL-statistics). Robustness of a depth function is an essential property for such applications. Here, robustness of three key depth functions, spatial, simplicial, and generalised Tukey, is explored via the influence function (IF) approach. For all three depths, the IFs are derived and found to be bounded, an important robustness property, and are applied to evaluate two other robustness features, gross error sensitivity and local shift sensitivity. These IFs are also used as components of the IFs of associated DL-statistics, for which through a standard approach consistency and asymptotic normality are then derived. In turn, the asymptotic normality is applied to obtain asymptotic relative efficiencies (ARE). For spatial depth, two forms of weight function suggested in the recent literature are considered and AREs in comparison with the mean are obtained. For all three depths and one of these weight functions, finite sample REs are obtained by simulation under normal, contaminated normal, and heavy-tailed t distributions. As a technical tool of general interest, needed here with the simplicial depth, the IF of a general U-statistic is derived.
机译:在构建非参数离群值检测器以及构建有用的非参数统计信息(例如深度加权L统计量(DL统计量))时,越来越多地使用深度函数。深度函数的鲁棒性是此类应用的基本属性。在这里,通过影响函数(IF)方法探索了三个关键深度函数(空间,简单和广义Tukey)的鲁棒性。对于所有三个深度,IF被推导并发现是有界的,这是重要的鲁棒性属性,并被用于评估其他两个鲁棒性特征,即总误差敏感性和局部偏移敏感性。这些IF也用作相关DL统计信息IF的组成部分,然后通过标准方法得出一致性和渐近正态性。反过来,应用渐近正态性以获得渐近相对效率(ARE)。对于空间深度,考虑了最近文献中提出的两种形式的权函数,并获得了与均值相比的ARE。对于所有三个深度和这些权重函数之一,通过在正态,污染正态和重尾t分布下进行仿真,可以获得有限的样本RE。作为普遍关注的技术工具(这里需要简单的深度),得出了一般U统计量的IF。

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