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Robust Detection of Multiple Outliers in Grouped Multivariate Data

机译:分组多元数据中多个异常值的鲁棒检测

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摘要

Many methods have been developedfor detecting multiple outliers in a single multivariate sample, but very few for the case where there may be groups in the data. We propose a method of simultaneously determining groups (as in cluster analysis) and detecting outliers, which are points that are distant from every group. Our method is an adaptation of the BACON algorithm proposed by Billor, Hadi and Velleman for the robust detection of multiple outliers in a single group of multivariate data. There are two versions of our method, depending on whether or not the groups can be assumed to have equal covariance matrices. The effectiveness of the method is illustrated by its application to two real data sets and further shown by a simulation study for different sample sizes and dimensions for 2 and 3 groups, with and without planted outliers in the data. When the number of groups is not known in advance, the algorithm could be used as a robust method of cluster analysis, by running it for various numbers of groups and choosing the best solution.
机译:已经开发出了许多方法来检测单个多元样本中的多个离群值,但是对于数据中可能存在组的情况,只有很少的方法。我们提出了一种同时确定组(如在聚类分析中)和检测离群值的方法,离群点是与每个组相距较远的点。我们的方法是Billor,Hadi和Velleman提出的BACON算法的改编版,用于对一组多元数据中的多个异常值进行鲁棒性检测。我们的方法有两种版本,具体取决于是否可以假设这些组具有相等的协方差矩阵。该方法在两个真实数据集上的应用说明了该方法的有效性,并通过针对2组和3组的不同样本大小和维度的模拟研究进一步证明了该方法的有效性,数据中有无异常值。如果事先不知道组数,则可以通过对各种组数运行算法并选择最佳解决方案,将该算法用作鲁棒的聚类分析方法。

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