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Shape bias of robust covariance estimators: an empirical study

机译:鲁棒协方差估计量的形状偏差:一项实证研究

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摘要

Detecting outliers in a multivariate point cloud is not trivial, especially when dealing with a sizable fraction of contamination. Over time, it has increasingly been recognized that the safest and most feasible approach to exposing outliers starts by computing a highly robust estimator of location and scatter that can withstand a large proportion of contamination. Many such estimators have been proposed in recent years. We will compare the worst-case bias of several prominent robust multivariate estimators by means of simulation. We also propose a new tool to compare robust estimators on real data sets, and illustrate it.
机译:在多元点云中检测异常值并非易事,特别是在处理相当大一部分污染时。随着时间的流逝,人们越来越认识到,最安全,最可行的暴露异常值的方法是通过计算可承受大部分污染的高度可靠的位置和散射估算器开始的。近年来已经提出了许多这样的估计器。我们将通过仿真比较几个突出的鲁棒多元估计量的最坏情况偏差。我们还提出了一种新工具,用于比较真实数据集上的鲁棒估计量并进行说明。

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