On the Evaluation of Outlier Detection and One-Class Classification Methods

Lorne Swersky, Henrique O. Marques, J. Sander, R. Campello, A. Zimek
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引用次数: 52

Abstract

It has been shown that unsupervised outlier detection methods can be adapted to the one-class classification problem. In this paper, we focus on the comparison of oneclass classification algorithms with such adapted unsupervised outlier detection methods, improving on previous comparison studies in several important aspects. We study a number of one-class classification and unsupervised outlier detection methods in a rigorous experimental setup, comparing them on a large number of datasets with different characteristics, using different performance measures. Our experiments led to conclusions that do not fully agree with those of previous work.
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关于离群点检测和一类分类方法的评价
研究表明,无监督离群点检测方法可以适用于单类分类问题。在本文中,我们将重点放在单类分类算法与这种自适应无监督离群点检测方法的比较上,在几个重要方面改进了之前的比较研究。我们在严格的实验设置中研究了许多单类分类和无监督异常值检测方法,并在具有不同特征的大量数据集上使用不同的性能度量对它们进行了比较。我们的实验得出的结论与以前的工作并不完全一致。
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