Recurrent Process Mining with Live Event Data

Author(s):  
Alifah Syamsiyah ◽  
Boudewijn F. van Dongen ◽  
Wil M. P. van der Aalst
2021 ◽  
Vol 11 (12) ◽  
pp. 5476
Author(s):  
Ana Pajić Simović ◽  
Slađan Babarogić ◽  
Ognjen Pantelić ◽  
Stefan Krstović

Enterprise resource planning (ERP) systems are often seen as viable sources of data for process mining analysis. To perform most of the existing process mining techniques, it is necessary to obtain a valid event log that is fully compliant with the eXtensible Event Stream (XES) standard. In ERP systems, such event logs are not available as the concept of business activity is missing. Extracting event data from an ERP database is not a trivial task and requires in-depth knowledge of the business processes and underlying data structure. Therefore, domain experts require proper techniques and tools for extracting event data from ERP databases. In this paper, we present the full specification of a domain-specific modeling language for facilitating the extraction of appropriate event data from transactional databases by domain experts. The modeling language has been developed to support complex ambiguous cases when using ERP systems. We demonstrate its applicability using a case study with real data and show that the language includes constructs that enable a domain expert to easily model data of interest in the log extraction step. The language provides sufficient information to extract and transform data from transactional ERP databases to the XES format.


Algorithms ◽  
2020 ◽  
Vol 13 (11) ◽  
pp. 285 ◽  
Author(s):  
Marco Pegoraro ◽  
Merih Seran Uysal ◽  
Wil M. P. van der Aalst

Process mining is a discipline which concerns the analysis of execution data of operational processes, the extraction of models from event data, the measurement of the conformance between event data and normative models, and the enhancement of all aspects of processes. Most approaches assume that event data is accurately captured behavior. However, this is not realistic in many applications: data can contain uncertainty, generated from errors in recording, imprecise measurements, and other factors. Recently, new methods have been developed to analyze event data containing uncertainty; these techniques prominently rely on representing uncertain event data by means of graph-based models explicitly capturing uncertainty. In this paper, we introduce a new approach to efficiently calculate a graph representation of the behavior contained in an uncertain process trace. We present our novel algorithm, prove its asymptotic time complexity, and show experimental results that highlight order-of-magnitude performance improvements for the behavior graph construction.


2019 ◽  
Vol 62 (3) ◽  
pp. 1143-1197
Author(s):  
Sander J. J. Leemans ◽  
Dirk Fahland
Keyword(s):  

2015 ◽  
Vol 89 (10) ◽  
pp. 359-368
Author(s):  
Wim van der Aalst ◽  
Angelique Koopman

Steeds meer gebeurtenissen (“events”) worden geregistreerd en opgeslagen in IT-systemen. Op dit moment staat “Big Data” volop in de schijnwer- pers en denken we vaak aan bedrijven als Google en Facebook. Event data zijn ech- ter in elke organisatie te vinden en op elk niveau. Process mining is de verbindende schakel tussen data en proces. Dankzij process mining is het mogelijk tegelijkertijd prestatie-georiënteerde en compliance-georiënteerde vragen te stellen. Door pro- cesmodellen te koppelen aan event data kunnen knelpunten opgespoord worden en is precies te zien waar en waarom mensen afwijken van het normatieve proces. Dit artikel beschrijft twee basisvormen van process mining: ‘process discovery’ en ‘con- formance/compliance checking’.


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