Theoretical Foundations and Algorithms for Outlier Ensembles

C. Aggarwal, Saket K. Sathe
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引用次数: 212

Abstract

Ensemble analysis has recently been studied in the context of the outlier detection problem. In this paper, we investigate the theoretical underpinnings of outlier ensemble analysis. In spite of the significant differences between the classification and the outlier analysis problems, we show that the theoretical underpinnings between the two problems are actually quite similar in terms of the bias-variance trade-off. We explain the existing algorithms within this traditional framework, and clarify misconceptions about the reasoning underpinning these methods. We propose more effective variants of subsampling and feature bagging. We also discuss the impact of the combination function and discuss the specific trade-offs of the average and maximization functions. We use these insights to propose new combination functions that are robust in many settings.
离群值集成的理论基础和算法
集成分析最近在异常值检测问题的背景下进行了研究。在本文中,我们研究了离群集合分析的理论基础。尽管分类和离群值分析问题之间存在显着差异,但我们表明,就偏差-方差权衡而言,这两个问题之间的理论基础实际上非常相似。我们在这个传统框架内解释了现有的算法,并澄清了关于这些方法的推理基础的误解。我们提出了更有效的子采样和特征装袋的变体。我们还讨论了组合函数的影响,并讨论了平均函数和最大化函数的具体权衡。我们利用这些见解提出了在许多情况下都具有鲁棒性的新组合函数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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