Event Abstraction for Process Mining using Supervised Learning Techniques
Niek Tax, Natalia Sidorova, Reinder Haakma, Wil M. P. van der Aalst

TL;DR
This paper introduces a supervised learning approach using Conditional Random Fields to abstract low-level event logs into higher-level representations, improving process discovery and model comprehensibility.
Contribution
It presents a novel method for event abstraction leveraging supervised learning with feature vectors and a sequence-focused metric, enhancing process mining outcomes.
Findings
Supervised event abstraction improves process model clarity.
The approach is effective on both real and synthetic data.
Sequence-focused metrics align well with process discovery tasks.
Abstract
Process mining techniques focus on extracting insight in processes from event logs. In many cases, events recorded in the event log are too fine-grained, causing process discovery algorithms to discover incomprehensible process models or process models that are not representative of the event log. We show that when process discovery algorithms are only able to discover an unrepresentative process model from a low-level event log, structure in the process can in some cases still be discovered by first abstracting the event log to a higher level of granularity. This gives rise to the challenge to bridge the gap between an original low-level event log and a desired high-level perspective on this log, such that a more structured or more comprehensible process model can be discovered. We show that supervised learning can be leveraged for the event abstraction task when annotations with…
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