Cortado---An Interactive Tool for Data-Driven Process Discovery and Modeling
Daniel Schuster, Sebastiaan J. van Zelst, Wil M. P. van der Aalst

TL;DR
Cortado is an interactive process discovery tool that combines automated algorithms with user input to incrementally build accurate process models from event data, integrating domain knowledge for improved results.
Contribution
The paper introduces Cortado, a novel tool that enables interactive, incremental process discovery by integrating user input with automated algorithms, enhancing model quality.
Findings
Supports incremental process model building
Integrates domain knowledge into process discovery
Unifies manual and automated modeling approaches
Abstract
Process mining aims to diagnose and improve operational processes. Process mining techniques allow analyzing the event data generated and recorded during the execution of (business) processes to gain valuable insights. Process discovery is a key discipline in process mining that comprises the discovery of process models on the basis of the recorded event data. Most process discovery algorithms work in a fully automated fashion. Apart from adjusting their configuration parameters, conventional process discovery algorithms offer limited to no user interaction, i.e., we either edit the discovered process model by hand or change the algorithm's input by, for instance, filtering the event data. However, recent work indicates that the integration of domain knowledge in (semi-)automated process discovery algorithms often enhances the quality of the process models discovered. Therefore, this…
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