ICIC   25583
INSTITUTO DE CIENCIAS E INGENIERIA DE LA COMPUTACION
Unidad Ejecutora - UE
artículos
Título:
Connecting Knowledge to Data Through Transformations in KnowID: System Description
Autor/es:
FILLOTTRANI, PABLO R.; KEET, C. MARIA; JAMIESON, STEPHAN
Revista:
KI - Kunstliche Intelligenz
Editorial:
Springer Science and Business Media Deutschland GmbH
Referencias:
Lugar: Berlín; Año: 2020 vol. 34 p. 373 - 379
ISSN:
0933-1875
Resumen:
Intelligent information systems deploy applied ontologies or logic-based conceptual data models for effective and efficient data management and to assist with decision-making. A core deliberation in the design of such systems, is how to link the knowledge to the data. We recently designed a novel knowledge-to-data architecture (KnowID) which aims to solve this critical step through a set of transformation rules rather than a mapping layer, which operate between models represented in EER notation and an enhanced relational model called the ARM. This system description zooms in on the novel tool for the core component of the transformation from the Artificial Intelligence-oriented modelling to the relational database-oriented data management. It provides an overview of the requirements, design, and implementation of the modular transformations module that straightforwardly permits extension with other components of the modular KnowID architecture.