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Recommending Metamodel Concepts during Modeling Activities with Pre-Trained Language Models. (arXiv:2104.01642v2 [cs.SE] UPDATED)
Jan. 17, 2022, 2:10 a.m. | Martin Weyssow, Houari Sahraoui, Eugene Syriani
cs.CL updates on arXiv.org arxiv.org
The design of conceptually sound metamodels that embody proper semantics in
relation to the application domain is particularly tedious in Model-Driven
Engineering. As metamodels define complex relationships between domain
concepts, it is crucial for a modeler to define these concepts thoroughly while
being consistent with respect to the application domain. We propose an approach
to assist a modeler in the design of a metamodel by recommending relevant
domain concepts in several modeling scenarios. Our approach does not require to
extract …
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