DisCoveR: Process Mining for Knowledge-Intensive Processes with DCR Graphs

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Constraint-based notations aim to model processes by capturing their underlying rules instead of a limited number of potential process flows, leaving maximum flexibility for the actor to choose the best-suited order of execution for a particular process instance. Dynamic Condition Response (DCR) graphs are a constraint-based notation that has seen significant industrial adoption. In recent years there have been made significant inroads into the development of process mining algorithms and techniques for DCR Graphs. In this paper, accompanying the keynote of the same name delivered at the workshop Algorithms & Theories for the Analysis of Event Data, we discuss some of these recent advances in process mining with DCR Graphs and conclude by identifying a number of open challenges for DCR-based process mining.

Original languageEnglish
JournalCEUR Workshop Proceedings
Volume3424
ISSN1613-0073
Publication statusPublished - 2023
Event2023 Joint of the Workshop on Algorithms and Theories for the Analysis of Event Data and the International Workshop on Petri Nets for Twin Transition, ATAED and PN4TT 2023 - Caparica, Portugal
Duration: 25 Jun 202330 Jun 2023

Conference

Conference2023 Joint of the Workshop on Algorithms and Theories for the Analysis of Event Data and the International Workshop on Petri Nets for Twin Transition, ATAED and PN4TT 2023
CountryPortugal
CityCaparica
Period25/06/202330/06/2023

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    Research areas

  • DCR Graphs, Process Mining

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