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ICSOutlier: Unsupervised Outlier Detection for Low-Dimensional Contamination Structure

机译:ICSOutlier:针对低维污染结构的无监督离群值检测

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Detecting outliers in a multivariate and unsupervised context is an important and ongoing problem notably for quality control. Many statistical methods are already implemented in R and are briefly surveyed in the present paper. But only a few lead to the accurate identification of potential outliers in the case of a small level of contamination. In this particular context, the Invariant Coordinate Selection (ICS) method shows remarkable properties for identifying outliers that lie on a low-dimensional subspace in its first invariant components. It is implemented in the ICSOutlier package. The main function of the package, ics.outlier, offers the possibility of labelling potential outliers in a completely automated way. Four examples, including two real examples in quality control, illustrate the use of the function. Comparing with several other approaches, it appears that ICS is generally as efficient as its competitors and shows an advantage in the context of a small proportion of outliers lying in a low-dimensional subspace. In quality control, the method may help in properly identifying some defective products while not detecting too many false positives.
机译:在多变量和无监督的情况下检测异常值是一个重要且持续存在的问题,尤其是对于质量控制而言。 R中已经实现了许多统计方法,并在本文中进行了简要概述。但是,在少量污染的情况下,只有少数几个可以导致对潜在异常值的准确识别。在此特定上下文中,不变坐标选择(ICS)方法显示出显着的特性,可用于识别位于其第一不变分量中低维子空间上的离群值。它在ICSOutlier软件包中实现。软件包的主要功能ics.outlier提供了以完全自动化的方式标记潜在异常值的可能性。四个示例(包括质量控制中的两个实际示例)说明了该功能的用法。与其他几种方法相比,似乎ICS的效率通常与其竞争者相同,并且在低维子空间中有少量异常值的情况下显示出优势。在质量控制中,该方法可以帮助正确识别一些有缺陷的产品,而不会检测到过多的误报。

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