Book Chapter
Bootstrapping Generalization of Process Models Discovered from Event Data
A Polyvyanyy, A Moffat, L García-Bañuelos
Advanced Information Systems Engineering | Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) | SPRINGER INTERNATIONAL PUBLISHING AG | Published : 2022
Abstract
Process mining extracts value from the traces recorded in the event logs of IT-systems, with process discovery the task of inferring a process model for a log emitted by some unknown system. Generalization is one of the quality criteria applied to process models to quantify how well the model describes future executions of the system. Generalization is also perhaps the least understood of those criteria, with that lack primarily a consequence of it measuring properties over the entire future behavior of the system when the only available sample of behavior is that provided by the log. In this paper, we apply a bootstrap approach from computational statistics, allowing us to define an estimat..
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Awarded by Australian Research Council
Funding Acknowledgements
Artem Polyvyanyy was in part supported by the Australian Research Council project DP180102839. A presentation of this work from an earlier stage of the research project is available at https://youtu.be/8I-87iGCzNI.