Publication | Open Access
Robust Process Discovery with Artificial Negative Events
152
Citations
29
References
2009
Year
EngineeringMachine LearningStructured Process ModelsText MiningStatistical Relational LearningNatural Language ProcessingData ScienceData MiningUncertainty QuantificationComplex Event ProcessingKnowledge Discovery ProcessEvent LogsProcess MiningRobust Process DiscoveryPredictive AnalyticsKnowledge DiscoveryProcess MonitoringProbability TheoryComputer ScienceProcess DiscoveryProcess ControlBusiness
Process discovery is the automated construction of structured process models from information system event logs. Such event logs often contain positive examples only. Without negative examples, it is a challenge to strike the right balance between recall and specificity, and to deal with problems such as expressiveness, noise, incomplete event logs, or the inclusion of prior knowledge. In this paper, we present a configurable technique that deals with these challenges by representing process discovery as a multi-relational classification problem on event logs supplemented with Artificially Generated Negative Events (AGNEs). This problem formulation allows using learning algorithms and evaluation techniques that are well-know in the machine learning community. Moreover, it allows users to have a declarative control over the inductive bias and language bias.
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