Publication
Title
An anomaly detection technique for business processes based on extended dynamic bayesian networks
Author
Abstract
Checking and analyzing various executions of different Business Processes can be a tedious task as the logs from these executions may contain lots of events, each with a (possibly large) number of attributes. We developed a way to automatically model the behavior captured in log files with dozens of attributes. The advantage of our method is that we do not need any prior knowledge about the data and the attributes. The learned model can then be used to detect anomalous executions in the data. To achieve this we extend the existing Dynamic Bayesian Networks with other (existing) techniques to better model the normal behavior found in log files. We introduce a new algorithm that is able to learn a model of a log file starting from the data itself. The model is capable of scoring events and cases, even when new values or new combinations of values appear in the log file, and has the ability to give a decomposition of the given score, indicating the root cause for the anomalies. Furthermore we show that our model can be used in a more general way for detecting Concept Drift.
Language
English
Source (book)
The 34th ACM/SIGAPP Symposium on Applied Computing, April 8-12, 2019 Limassol, Cyprus
Publication
2019
ISBN
978-1-4503-5933-7
DOI
10.1145/3297280.3297326
Volume/pages
(2019) , p. 494-501
ISI
000474685800064
Full text (Publisher's DOI)
Full text (open access)
UAntwerpen
Faculty/Department
Research group
Publication type
Subject
Affiliation
Publications with a UAntwerp address
External links
Web of Science
Record
Identifier
Creation 29.04.2019
Last edited 02.10.2024
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