On the Role of Fitness, Precision, Generalization and Simplicity in Process Discovery

Abstract

Abstract. Process discovery algorithms typically aim at discovering process models from event logs that best describe the recorded behavior. Often, the quality of a process discovery algorithm is measured by quan-tifying to what extent the resulting model can reproduce the behavior in the log, i.e. replay fitness. At the same time, there are many other metrics that compare a model with recorded behavior in terms of the precision of the model and the extent to which the model generalizes the behavior in the log. Furthermore, several metrics exist to measure the complexity of a model irrespective of the log. In this paper, we show that existing process discovery algorithm typ-ically consider at most two out of the four main quality dimensions: replay fitness, precision, generalization and simplicity. Moreover, exist-ing approaches can not steer the discovery process based on user-defined weights for the four quality dimensions. This paper also presents the ETM algorithm which allows the user to seamlessly steer the discovery process based on preferences with respect to the four quality dimensions. We show that all dimensions are im-portant for process discovery. However, it only makes sense to consider precision, generalization and simplicity if the replay fitness is acceptable.

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Last time updated on 29/10/2017

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