Two novel outlier detection approaches based on unsupervised possibilistic and fuzzy clustering

Cebeci, Zeynel and Cebeci, Cagatay and Tahtali, Yalcin and Bayyurt, Lutfi (2022) Two novel outlier detection approaches based on unsupervised possibilistic and fuzzy clustering. Peer J Computer Science, 8. e1060. (https://doi.org/10.7717/peerj-cs.1060)

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Abstract

Outliers are data points that significantly deviate from other data points in a data set because of different mechanisms or unusual processes. Outlier detection is one of the intensively studied research topics for identification of novelties, frauds, anomalies, deviations or exceptions in addition to its use for data cleansing in data science. In this study, we propose two novel outlier detection approaches using the typicality degrees which are the partitioning result of unsupervised possibilistic clustering algorithms. The proposed approaches are based on finding the atypical data points below a predefined threshold value, a possibilistic level for evaluating a point as an outlier. The experiments on the synthetic and real data sets showed that the proposed approaches can be successfully used to detect outliers without considering the structure and distribution of the features in multidimensional data sets.