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Local Concurrency Detection in Business Process Event Logs
Author(s) -
Abel Armas-Cervantes,
Marlon Dumas,
Marcello La Rosa,
Abderrahmane Maaradji
Publication year - 2019
Publication title -
acm transactions on internet technology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.667
H-Index - 56
eISSN - 1557-6051
pISSN - 1533-5399
DOI - 10.1145/3289181
Subject(s) - concurrency , computer science , event (particle physics) , process (computing) , relation (database) , process mining , distributed concurrency control , isolation (microbiology) , set (abstract data type) , interpretation (philosophy) , generalization , business process , data mining , programming language , concurrency control , work in process , business process management , mathematics , mathematical analysis , physics , database transaction , quantum mechanics , marketing , biology , microbiology and biotechnology , business
Process mining techniques aim at analyzing records generated during the execution of a business process in order to provide insights on the actual performance of the process. Detecting concurrency relations between events is a fundamental primitive underpinning a range of process mining techniques. Existing approaches to this problem identify concurrency relations at the level of event types under a global interpretation. If two event types are declared to be concurrent, every occurrence of one event type is deemed to be concurrent to one occurrence of the other. In practice, this interpretation is too coarse-grained and leads to over-generalization. This article proposes a finer-grained approach, whereby two event types may be deemed to be in a concurrency relation relative to one state of the process, but not relative to other states. In other words, the detected concurrency relation holds locally, relative to a set of states. Experimental results both with artificial and real-life logs show that the proposed local concurrency detection approach improves the accuracy of existing concurrency detection techniques.

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