Event Abstraction for Enterprise Collaboration Systems to Support Social
Process Mining
- URL: http://arxiv.org/abs/2308.04396v2
- Date: Wed, 9 Aug 2023 13:56:09 GMT
- Title: Event Abstraction for Enterprise Collaboration Systems to Support Social
Process Mining
- Authors: Jonas Blatt, Patrick Delfmann, Petra Schubert
- Abstract summary: One aim of Process Mining is the discovery of process models from event logs of information systems.
ECS logs come with special characteristics that have so far not been fully addressed by existing event abstraction approaches.
We aim to close this gap with a tailored ECS event abstraction approach that trains a model by comparing recorded actual user activities with the system-generated low-level traces.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: One aim of Process Mining (PM) is the discovery of process models from event
logs of information systems. PM has been successfully applied to
process-oriented enterprise systems but is less suited for communication- and
document-oriented Enterprise Collaboration Systems (ECS). ECS event logs are
very fine-granular and PM applied to their logs results in spaghetti models. A
common solution for this is event abstraction, i.e., converting low-level logs
into more abstract high-level logs before running discovery algorithms. ECS
logs come with special characteristics that have so far not been fully
addressed by existing event abstraction approaches. We aim to close this gap
with a tailored ECS event abstraction (ECSEA) approach that trains a model by
comparing recorded actual user activities (high-level traces) with the
system-generated low-level traces (extracted from the ECS). The model allows us
to automatically convert future low-level traces into an abstracted high-level
log that can be used for PM. Our evaluation shows that the algorithm produces
accurate results. ECSEA is a preprocessing method that is essential for the
interpretation of collaborative work activity in ECS, which we call Social
Process Mining.
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