基于累积方差排序的多变量数据无监督类分离

Andrew Foss, Osmar R Zaiane, Sandra Zilles
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引用次数: 9

摘要

本文介绍了异常点检测方法的一个新扩展和一个新概念——通过方差进行类分离。我们表明,关于多个子空间中点的离群性的累积信息导致具有不同方差的类自然倾向于分离的排序。利用这一点可以产生一种非常有效和高效的无监督类分离方法,在分布严重重叠的困难情况下特别有用。与典型的离群值检测算法不同,该方法可以应用于“罕见类”以外的情况,并取得了巨大的成功。给出了实现该方法的两种新算法。此外,实验表明,新方法通常优于其他最先进的高维数据异常检测方法,如Feature Bagging, SOE1, LOF, ORCA和鲁棒马氏距离,甚至可以与领先的监督分类方法竞争。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised Class Separation of Multivariate Data through Cumulative Variance-Based Ranking
This paper introduces a new extension of outlier detection approaches and a new concept, class separation through variance. We show that accumulating information about the outlierness of points in multiple subspaces leads to a ranking in which classes with differing variance naturally tend to separate. Exploiting this leads to a highly effective and efficient unsupervised class separation approach, especially useful in the difficult case of heavily overlapping distributions. Unlike typical outlier detection algorithms, this method can be applied beyond the `rare classes' case with great success. Two novel algorithms that implement this approach are provided. Additionally, experiments show that the novel methods typically outperform other state-of-the-art outlier detection methods on high dimensional data such as Feature Bagging, SOE1, LOF, ORCA and Robust Mahalanobis Distance and competes even with the leading supervised classification methods.
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