Please use this identifier to cite or link to this item: https://elib.belstu.by/handle/123456789/52916
Title: The concept of random cluster based outlier detection
Authors: Kiersztyn, Adam
Urbanovich, Pavel
Shutko, Nadzeya
Keywords: outlier detection
statistical semantic
Issue Date: 2021
Citation: Adam Kiersztyn, Pavel Urbanovich, Nadzeya Shutko. The concept of random cluster based outlier detection. In: Computational Intelligence, Information Systems and Data Mining/ edited by Małgorzata Charytanowicz, Paweł Karczmarek, Adam Kiersztyn. – Lublin: Wydawnictwo Politechniki Lubelskiej, 2021. – P. 170-181
Abstract: Detection of outliers is one of the most common and important problems in modern data analysis. Sources of outliers are different. These could be the result of a database malfunction or user errors. The problem is very important due to the dynamic development of large data sets. Therefore, in this paper we present detailed results of work on the concept of using distribution properties to detect outliers. The aim of the study is to introduce an innovative solution that enables the use of statistical semantics of identification and classification of outliers. The undoubted advantages of the novel approach for outlier detection are the simplicity of interpretation and the possibility of its modification. The effectiveness of the proposed method was compared with other recognized techniques to detecting outliers on both artificially generated and empirical data sets.
URI: https://elib.belstu.by/handle/123456789/52916
ISBN: 978-83-7947-492-9
Appears in Collections:Публикации в зарубежных изданиях

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