Discovery and Simulation of Data-Aware Business Processes
August 24, 2024 Β· Declared Dead Β· π International Conference on Process Mining
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Authors
Orlenys LΓ³pez-Pintado, Serhii Murashko, Marlon Dumas
arXiv ID
2408.13666
Category
cs.SE: Software Engineering
Cross-listed
cs.LG
Citations
5
Venue
International Conference on Process Mining
Last Checked
4 months ago
Abstract
Simulation is a common approach to predict the effect of business process changes on quantitative performance. The starting point of Business Process Simulation (BPS) is a process model enriched with simulation parameters. To cope with the typically large parameter spaces of BPS models, several methods have been proposed to automatically discover BPS models from event logs. Virtually all these approaches neglect the data perspective of business processes. Yet, the data attributes manipulated by a business process often determine which activities are performed, how many times, and when. This paper addresses this gap by introducing a data-aware BPS modeling approach and a method to discover data-aware BPS models from event logs. The BPS modeling approach supports three types of data attributes (global, case-level, and event-level) as well as deterministic and stochastic attribute update rules and data-aware branching conditions. An empirical evaluation shows that the proposed method accurately discovers the type of each data attribute and its associated update rules, and that the resulting BPS models more closely replicate the process execution control flow relative to data-unaware BPS models.
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