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Univariate and multivariate outlier identification for skewed or heavy-tailed distributions

机译:偏态分布或重尾分布的单变量和多元离群值识别

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摘要

In univariate and in multivariate analyses, it is difficult to identify outliers in the case of skewed or heavy-tailed distributions. In this article, we propose simple univariate and multivariate outlier identification procedures that perform well with these types of distributions while keeping the computational complexity low. We describe the commands gboxplot (univariate case) and sdasym (multivariate case), which implement these procedures in Stata.
机译:在单变量和多变量分析中,在偏态分布或重尾分布的情况下很难识别异常值。在本文中,我们提出了简单的单变量和多元离群值识别过程,这些过程在这些类型的分布中表现良好,同时保持较低的计算复杂度。我们描述了命令gboxplot(单变量)和sdasym(多变量),它们在Stata中实现了这些过程。

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