Authors
Niek Tax, Sebastiaan J van Zelst, Irene Teinemaa
Publication date
2018
Conference
Enterprise, Business-Process and Information Systems Modeling: 19th International Conference, BPMDS 2018, 23rd International Conference, EMMSAD 2018, Held at CAiSE 2018, Tallinn, Estonia, June 11-12, 2018, Proceedings 19
Pages
165-180
Publisher
Springer International Publishing
Description
A plethora of automated process discovery techniques have been developed which aim to discover a process model based on event data originating from the execution of business processes. The aim of the discovered process models is to describe the control-flow of the underlying business process. At the same time, a variety of sequence modeling techniques have been developed in the machine learning domain, which aim at finding an accurate, not necessarily interpretable, model describing sequence data. Both approaches ultimately aim to find a model that generalizes the behavior observed, i.e., they describe behavior that is likely to be part of the underlying distribution, whilst disallowing unlikely behavior. While the generalizing capabilities of process discovery algorithms have been studied before, a comparison, in terms of generalization, w.r.t. sequence models is not yet explored. In this paper we …
Total citations
2020202120222023202424411
Scholar articles