我应该使用哪种离群值检测器?

K. Ting, Sunil Aryal, T. Washio
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引用次数: 4

摘要

本教程有四个目的:(1)提供当前不同离群值检测器的比较工作,并分析这些工作的优缺点及其建议。(2)给出离群值检测器的非明显应用。这提供了异常值检测器如何在通常不被认为是异常值检测域的区域中使用的示例。(3)邀请研究界探讨未来的研究方向,无论是比较研究还是一般的离群值检测。(4)根据目前文献的理解,给出了选择离群值检测器时需要考虑的因素,以及一些“顶级”推荐算法的优缺点。
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Which Outlier Detector Should I use?
This tutorial has four aims: (1) Providing the current comparative works on different outlier detectors, and analysing the strengths and weaknesses of these works and their recommendations. (2) Presenting non-obvious applications of outlier detectors. This provides examples of how outlier detectors are used in areas which are not normally considered to be the domains of outlier detection. (3) Inviting the research community to explore future research directions, in terms of both comparative study and outlier detection in general. (4) Giving an advice on the factors to consider when choosing an outlier detector, and strengths and weaknesses of some "top" recommended algorithms based on the current understanding in the literature.
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