The Effect of Different Similarity Distance Measures in Detecting Outliers Using Single-Linkage Clustering Algorithm for Univariate Circular Biological Data

IF 1.1 Q3 STATISTICS & PROBABILITY Pakistan Journal of Statistics and Operation Research Pub Date : 2022-09-09 DOI:10.18187/pjsor.v18i3.3982
N. S. Zulkipli, S. Z. Satari, W. N. S. Wan Yusoff
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Abstract

The procedure of outliers detection in univariate circular data can be developed using clustering algorithm. In clustering, it is necessary to calculate the similarity measure in order to cluster the observations into their own group. The similarity measure in circular data can be determined by calculating circular distance between each point of angular observation. In this paper, clustering-based procedure for outlier detection in univariate circular biological data with different similarity distance measures will be developed and the performance will be investigated. Three different circular similarity distance measures are used for the outliers detection procedure using single-linkage clustering algorithm. However, there are two similarity measures namely Satari distance and Di distance that are found to have similarity in formula for univariate circular data. The aim of this study is to develop and demonstrate the effectiveness of proposed clustering-based procedure with different similarity distance measure in detecting outliers. Therefore, in this study the circular similarity distance of SL-Satari/Di and another similarity measure namely SL-Chang will be compared at certain cutting rule. It is found that clustering-based procedure using single-linkage algorithm with different similarity distances are applicable and promising approach for outlier detection in univariate circular data, particularly for biological data. The result also found that at a certain condition of data, the SL-Satari/Di distance seems to overperform the performance of SL-Chang distance.
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单变量圆形生物数据单链接聚类算法中不同相似距离测度对异常点检测的影响
单变量圆形数据的异常点检测过程可以采用聚类算法进行。在聚类中,需要计算相似性度量,以便将观测值聚到自己的组中。圆形数据的相似性度量可以通过计算各角度观测点之间的圆距离来确定。本文提出了一种基于聚类的单变量圆形生物数据异常点检测方法,并对其性能进行了研究。采用单链接聚类算法,将三种不同的圆形相似距离度量用于异常点检测过程。然而,在单变量圆形数据的公式中,有两个相似度量,即Satari距离和Di距离具有相似性。本研究的目的是发展和证明所提出的基于聚类的方法具有不同的相似距离度量在检测异常值方面的有效性。因此,在本研究中,我们将在一定切削规则下比较SL-Satari/Di与另一种相似测度SL-Chang的圆形相似距离。研究发现,利用不同相似距离的单链接算法进行聚类是一种适用于单变量圆形数据,特别是生物数据异常点检测的有前途的方法。结果还发现,在一定的数据条件下,SL-Satari/Di距离似乎优于SL-Chang距离的性能。
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来源期刊
CiteScore
3.30
自引率
26.70%
发文量
53
期刊介绍: Pakistan Journal of Statistics and Operation Research. PJSOR is a peer-reviewed journal, published four times a year. PJSOR publishes refereed research articles and studies that describe the latest research and developments in the area of statistics, operation research and actuarial statistics.
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