Towards an Ontology for Conceptual Modeling

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Abstract:

Conceptual modeling can be viewed as a way of expressing human understanding of a body of knowledge. This view can be viewed as distinct from standard notions of data modeling and ontology, which seek to directly describe data and reality. We define conceptual interoperability, give use cases and requirements for it, and introduce the Conceptual Model Ontology (CMO), which satisfies the discussed use cases and requirements. We show how, using a common vocabulary, conceptual models can be used to tie together data at the level of conceptual interoperability. Finally, we introduce an implementation of CMO in the semantic web Biomedical Informatics Grid (swBIG), a linked data proxy for cancer Biomedical Informatics Grid (caBIG) models, semantic metadata, and data.

History

DateCreated ByLink
March 14, 2011
15:31:46
James McCuskerDownload

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