Title
Generating event logs from non-process-aware systems enabling business process mining
Abstract
As information systems age they become legacy information systems (LISs), embedding business knowledge not present in other artefacts. LISs must be modernised when their maintainability falls below acceptable limits but the embedded business knowledge is valuable information that must be preserved to align the modernised versions of LISs with organisations' real-world business processes. Business process mining permits the discovery and preservation of all meaningful embedded business knowledge by using event logs, which represent the business activities executed by an information system. Event logs can be easily obtained through the execution of process-aware information systems (PAISs). However, several non-process-aware information systems also implicitly support organisations' business processes. This article presents a technique for obtaining event logs from traditional information systems (without any in-built logging functionality) by statically analysing and modifying LISs. The technique allows the modified systems to dynamically record event logs. The approach is validated with a case study involving a healthcare information system used in Austrian hospitals, which shows the technique obtains event logs that effectively and efficiently enable the discovery of embedded business processes. This implies the techniques provided within the process mining field, which are based on event logs, may also be applied to traditional information systems.
Year
DOI
Venue
2011
10.1080/17517575.2011.587545
Enterprise IS
Keywords
Field
DocType
business process,event log,process-aware information system,healthcare information system,business activity,business process mining,valuable information,traditional information system,information system,generating event log,non-process-aware information system,non-process-aware system,legacy information system,dynamic analysis,modernisation,process mining,legacy system
Data science,Information system,Artifact-centric business process model,Data mining,Systems engineering,Computer science,Business process modeling,Process mining,Business process,Software engineering,Business process discovery,Business rule,Business activity monitoring
Journal
Volume
Issue
ISSN
5
3
1751-7575
Citations 
PageRank 
References 
30
1.11
22
Authors
6
Name
Order
Citations
PageRank
Ricardo Perez-Castillo1584.45
Barbara Weber2120056.07
Jakob Pinggera355529.17
Stefan Zugal459829.26
Ignacio Garcia-Rodriguez de Guzman5805.31
Mario Piattini64232354.63