Extracting Declarative Process Models from Natural Language

Publication date

2019-06

Authors

van der Aa, Han
Di Ciccio, ClaudioORCID 0000-0001-5570-0475ISNI 000000051813627X
Leopold, HenrikISNI 0000000410084674
Reijers, H.A.ORCID 0000-0001-9634-5852ISNI 0000000037238136

Editors

Giorgini, Paolo
Weber, Barbara

Advisors

Supervisors

Document Type

Part of book
Open Access logo

License

taverne

Abstract

Process models are an important means to capture information on organizational operations and often represent the starting point for process analysis and improvement. Since the manual elicitation and creation of process models is a time-intensive endeavor, a variety of techniques have been developed that automatically derive process models from textual process descriptions. However, these techniques, so far, only focus on the extraction of traditional, imperative process models. The extraction of declarative process models, which allow to effectively capture complex process behavior in a compact fashion, has not been addressed. In this paper we close this gap by presenting the first automated approach for the extraction of declarative process models from natural language. To achieve this, we developed tailored Natural Language Processing techniques that identify activities and their inter-relations from textual constraint descriptions. A quantitative evaluation shows that our approach is able to generate constraints that closely resemble those established by humans. Therefore, our approach provides automated support for an otherwise tedious and complex manual endeavor.

Keywords

Declarative modelling, Natural language processing, Model extraction, Taverne

Citation

van der Aa, H, Di Ciccio, C, Leopold, H & Reijers, H A 2019, Extracting Declarative Process Models from Natural Language. in P Giorgini & B Weber (eds), Advanced Information Systems Engineering - 31st International Conference, CAiSE 2019, Rome, Italy, June 3-7, 2019, Proceedings. vol. 11483, Lecture Notes in Computer Science, Springer, pp. 365-382. https://doi.org/10.1007/978-3-030-21290-2_23