Generalization in Automated Process Discovery: A Framework based on Event Log Patterns
Daniel Rei{\ss}ner, Abel Armas-Cervantes, Marcello La Rosa

TL;DR
This paper introduces a new framework for measuring process model generalization in process mining, addressing limitations of existing measures by incorporating pattern-based analysis and handling large, complex event logs.
Contribution
It proposes a novel pattern-based generalization framework that improves applicability to real-life logs and complex models, considering specific control-flow constructs.
Findings
The new measure outperforms baseline measures in ranking models that generalize observed patterns.
It can efficiently handle datasets two orders of magnitude larger than previous measures.
The framework effectively identifies repetitive and concurrent patterns in event logs.
Abstract
The importance of quality measures in process mining has increased. One of the key quality aspects, generalization, is concerned with measuring the degree of overfitting of a process model w.r.t. an event log, since the recorded behavior is just an example of the true behavior of the underlying business process. Existing generalization measures exhibit several shortcomings that severely hinder their applicability in practice. For example, they assume the event log fully fits the discovered process model, and cannot deal with large real-life event logs and complex process models. More significantly, current measures neglect generalizations for clear patterns that demand a certain construct in the model. For example, a repeating sequence in an event log should be generalized with a loop structure in the model. We address these shortcomings by proposing a framework of measures that…
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Taxonomy
TopicsBusiness Process Modeling and Analysis · Semantic Web and Ontologies · Data Quality and Management
