Extracting Semantic Process Information from the Natural Language in Event Logs
Adrian Rebmann, Han van der Aa

TL;DR
This paper introduces a method that uses advanced language models to automatically extract semantic process information from unstructured textual attributes in event logs, enhancing process mining capabilities.
Contribution
It presents a novel approach combining semantic role labeling with attribute classification to extract detailed process information from textual event data.
Findings
Effective extraction of up to eight semantic roles per event
Demonstrated improved process analysis through case study
Validated approach across diverse event logs
Abstract
Process mining focuses on the analysis of recorded event data in order to gain insights about the true execution of business processes. While foundational process mining techniques treat such data as sequences of abstract events, more advanced techniques depend on the availability of specific kinds of information, such as resources in organizational mining and business objects in artifact-centric analysis. However, this information is generally not readily available, but rather associated with events in an ad hoc manner, often even as part of unstructured textual attributes. Given the size and complexity of event logs, this calls for automated support to extract such process information and, thereby, enable advanced process mining techniques. In this paper, we present an approach that achieves this through so-called semantic role labeling of event data. We combine the analysis of…
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Taxonomy
MethodsHigh-Order Consensuses
