利用圆形距离的新截断点检测单变量圆形数据中的异常值

Benjawan Rattanawong, Nipada Papukdee, Wuttichai Srisodaphol
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引用次数: 0

摘要

本研究的目的是利用圆距离的概念提出两个新的截断点,用于单变量圆形数据的离群值检测。第一个截止点涉及使用基于调整后的圆形距离的伽马分布的分位数,而第二个截止点则使用针对倾斜数据的修改箱线图的上栅栏。使用未污染和被污染的数据进行模拟研究,并通过异常值的比例、所有异常值被成功检测的概率、异常值被错误检测为内线的概率(掩蔽效应)和内线被检测为异常值的概率(淹没效应)来评估所提出的截止点的性能。实际数据示例也被用来证明所提出的截止点的有效性。仿真和实际数据实验结果表明,与现有的截止点相比,所提出的截止点使用了基于调整圆距离的伽马分布的分位数,并且在异常点检测方面取得了成功。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of Outliers in Univariate Circular Data Using New Cut-off Points for the Circular Distance
The aim of this study is to propose two new cut-off points for outlier detection in univariate circular data using the concept of circular distance. The first cut-off point involves using a quantile of the gamma distribution based on adjusted circular distances, whereas the second cut-off point employs the upper fence of a modified boxplot for skewed data. Simulation studies are conducted using both uncontaminated and contaminated data, and the performance of the proposed cut-off points is evaluated in the proportion of outliers, probability of all outliers being successfully detected, probability of outliers being falsely detected as inliers (masking effect), and probability of inliers detected as outliers (swamping effect). Real data examples are also used to demonstrate the efficacy of the proposed cut-off points. The results of the simulation and real data experiments show that the proposed cut-off point involves using a quantile of the gamma distribution based on adjusted circular distances and is successful in outlier detection compared to the existing cut-off points.
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