representan
Representan is a term used in theoretical discussions of data representation and interoperable modeling. In these contexts, Representan refers to a standardized framework for translating real-world phenomena into structured, machine-interpretable representations that can be shared across software systems.
Representan defines a multi-layer representation space that combines nominal descriptors, quantitative features, and relational connectivity. It
Architecture and structure are central to Representan. The framework typically comprises three layers: a feature layer
Applications of Representan span data integration, digital twins, heterogeneous data exchanges, knowledge graphs, and AI model
Development and reception of Representan remain largely theoretical and experimental. Proponents argue that it supports explainability,
See also: Representation, Ontology, Data modeling, Knowledge graph.