ProcessCO v1.3's Terms, Properties, Relationships and Axioms - A Core
Ontology for Processes
- URL: http://arxiv.org/abs/2108.02816v1
- Date: Thu, 5 Aug 2021 19:03:59 GMT
- Title: ProcessCO v1.3's Terms, Properties, Relationships and Axioms - A Core
Ontology for Processes
- Authors: Pablo Becker and Luis Olsina
- Abstract summary: This preprint specifies and defines all Terms, Properties, Relationships and Axioms of Process Core Ontology.
This is a five-level ontological architecture, which considers Foundational Core, Domain and Instance levels.
In the end of this document, we address the ProcessCO vs. ThingFO non-taxonomic relationship verification matrix.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: The present preprint specifies and defines all Terms, Properties,
Relationships and Axioms of ProcessCO (Process Core Ontology). ProcessCO is an
ontology devoted mainly for Work Entities and related terms, which is placed at
the core level in the context of a multilayer ontological architecture called
FCD-OntoArch (Foundational, Core, and Domain Ontological Architecture for
Sciences). This is a five-layered ontological architecture, which considers
Foundational, Core, Domain and Instance levels, where the domain level is split
down in two sub-levels, namely: Top-domain and Low-domain. Ontologies at the
same level can be related to each other, except for the foundational level
where only ThingFO (Thing Foundational Ontology) is found. In addition,
ontologies' terms and relationships at lower levels can be semantically
enriched by ontologies' terms and relationships from the higher levels. Note
that both ThingFO and ontologies at the core level such as ProcessCO,
SituationCO, among others, are domain independent with respect to their terms.
Stereotypes are the mechanism used for enriching ProcessCO terms mainly from
the ThingFO ontology. Note that in the end of this document, we address the
ProcessCO vs. ThingFO non-taxonomic relationship verification matrix.
Additionally, note that annotations of updates from the previous version
(ProcessCO v1.2) to the current one (v1.3) can be found in Appendix A. For
instance, 6 axioms were added.
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