A framework for optimisation based stochastic process discovery
Pierre Cry, Andr\'as Horv\'ath, Paolo Ballarini, Pascal Le Gall

TL;DR
This paper introduces an optimization-based method to enhance stochastic process models derived from event logs, improving their accuracy in reproducing observed execution likelihoods using Petri nets.
Contribution
It presents a novel approach that optimizes transition weights in Petri nets to better match the stochastic behavior observed in event logs, advancing process mining techniques.
Findings
Improved accuracy over existing stochastic process mining methods
Effective optimization using maximum likelihood and earth moving distance
Validated on real system logs with positive results
Abstract
Process mining is concerned with deriving formal models capable of reproducing the behaviour of a given organisational process by analysing observed executions collected in an event log. The elements of an event log are finite sequences (i.e., traces or words) of actions. Many effective algorithms have been introduced which issue a control flow model (commonly in Petri net form) aimed at reproducing, as precisely as possible, the language of the considered event log. However, given that identical executions can be observed several times, traces of an event log are associated with a frequency and, hence, an event log inherently yields also a stochastic language. By exploiting the trace frequencies contained in the event log, the stochastic extension of process mining, therefore, consists in deriving stochastic (Petri nets) models capable of reproducing the likelihood of the observed…
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Taxonomy
TopicsBusiness Process Modeling and Analysis · Semantic Web and Ontologies
