| Literature DB >> 29706858 |
Thomas Baier1, Claudio Di Ciccio2, Jan Mendling2, Mathias Weske3.
Abstract
Nowadays, business processes are increasingly supported by IT services that produce massive amounts of event data during the execution of a process. These event data can be used to analyze the process using process mining techniques to discover the real process, measure conformance to a given process model, or to enhance existing models with performance information. Mapping the produced events to activities of a given process model is essential for conformance checking, annotation and understanding of process mining results. In order to accomplish this mapping with low manual effort, we developed a semi-automatic approach that maps events to activities using insights from behavioral analysis and label analysis. The approach extracts Declare constraints from both the log and the model to build matching constraints to efficiently reduce the number of possible mappings. These mappings are further reduced using techniques from natural language processing, which allow for a matching based on labels and external knowledge sources. The evaluation with synthetic and real-life data demonstrates the effectiveness of the approach and its robustness toward non-conforming execution logs.Entities:
Keywords: Business process intelligence; Constraint satisfaction; Declare; Event mapping; Natural language processing; Process mining
Year: 2017 PMID: 29706858 PMCID: PMC5910522 DOI: 10.1007/s10270-017-0603-z
Source DB: PubMed Journal: Softw Syst Model ISSN: 1619-1366 Impact factor: 1.910