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  4. Applying sequence mining for outlier detection in process mining
 
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2018
Conference Paper
Title

Applying sequence mining for outlier detection in process mining

Abstract
One of the challenges in applying process mining algorithms on real event data, is the presence of outlier behavior. Such behaviour often leads to complex, incomprehensible, and, sometimes, even inaccurate process mining results. As a result, correct and/or important behaviour of the process may be concealed. In this paper, we exploit sequence mining techniques for the purpose of outlier detection in the process mining domain. Using the proposed approach, it is even possible to detect outliers in case of heavy parallelism and/or long-term dependencies between business process activities. Our method has been implemented in both the ProM- and the RapidProM framework. Using these implementations, we conducted a collection of experiments that show that we are able to detect and remove outlier behaviour in event data. Our evaluation clearly demonstrates that the proposed method accurately removes outlier behaviour and, indeed, improves process discovery results.
Author(s)
Fani Sani, M.
Zelst, S.J. van
Aalst, W.M.P. van der
Mainwork
On the Move to Meaningful Internet Systems. OTM 2018 Conferences. Proceedings. Pt.II  
Conference
International Conference "Cooperative Information Systems" (CoopIS) 2018  
International Conference "Ontologies, Databases, and Applications of Semantics" (ODBASE) 2018  
International Conference "Cloud and Trusted Computing" (C&TC) 2018  
DOI
10.1007/978-3-030-02671-4_6
Language
English
Fraunhofer-Institut für Angewandte Informationstechnik FIT  
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