基于距离的离群值的概率变换

IF 4 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Machine learning and knowledge extraction Pub Date : 2023-05-16 DOI:10.3390/make5030042
David Muhr, M. Affenzeller, Josef Küng
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引用次数: 1

摘要

基于距离的离群点检测方法的分数很难解释,并且在没有额外背景的情况下确定正常数据点和离群点之间合适的截止阈值是具有挑战性的。我们描述了基于距离的异常值得分到可解释的概率估计的一般转换。转换是排序稳定的,并增加了正常和离群数据点之间的对比。确定数据点之间的距离关系对于确定数据中的最近邻关系是必要的,但是大多数计算的距离通常被丢弃。我们表明,到其他数据点的距离可用于建模距离概率分布,随后,使用分布将基于距离的离群值得分转化为离群概率。在各种表格和图像基准数据集上,我们表明概率变换不会影响离群值排名(ROC AUC)或检测性能(AP, F1),并且增加了正态和离群值分布(统计距离)之间的对比。实验结果表明,通过增加正常样本和离群样本之间的对比,可以将基于距离的离群值得分转换为可解释的概率。我们的工作推广到广泛的基于距离的离群值检测方法,并且,由于使用现有的距离计算,它不会增加显著的计算开销。
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A Probabilistic Transformation of Distance-Based Outliers
The scores of distance-based outlier detection methods are difficult to interpret, and it is challenging to determine a suitable cut-off threshold between normal and outlier data points without additional context. We describe a generic transformation of distance-based outlier scores into interpretable, probabilistic estimates. The transformation is ranking-stable and increases the contrast between normal and outlier data points. Determining distance relationships between data points is necessary to identify the nearest-neighbor relationships in the data, yet most of the computed distances are typically discarded. We show that the distances to other data points can be used to model distance probability distributions and, subsequently, use the distributions to turn distance-based outlier scores into outlier probabilities. Over a variety of tabular and image benchmark datasets, we show that the probabilistic transformation does not impact outlier ranking (ROC AUC) or detection performance (AP, F1), and increases the contrast between normal and outlier score distributions (statistical distance). The experimental findings indicate that it is possible to transform distance-based outlier scores into interpretable probabilities with increased contrast between normal and outlier samples. Our work generalizes to a wide range of distance-based outlier detection methods, and, because existing distance computations are used, it adds no significant computational overhead.
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来源期刊
CiteScore
6.30
自引率
0.00%
发文量
0
审稿时长
7 weeks
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