Memorias de investigación
Premio:
Best Paper of the TTIA in CAEPIA2007: A workflow for the networked ontologies lifecycle. A case study in FAO of the UN
Año:2007

Áreas de investigación
  • Inteligencia artificial

Datos
Descripción
The research article ¿A workflow for the networked ontologies lifecycle. A case study in FAO of the UN¿ presented in CAEPIA (the Conference of the Spanish Association of Artificial Intelligence) has been selected as one of the two best papers of the TTIA (Artificial Intelligence Technology Transfer) section. The article was presented on November 15, 2007, in Salamanca (Spain). It was a collaboration of UPM and FAO, being its authors Óscar Muñoz-García, Asunción Gómez-Pérez, Marta Iglesias-Sucasas and Soonho Kim. The article describes some of the results obtained in one of the NeOn case study. It also includes the reasons why networked ontologies are an important instrument for FAO to ¿collect, analyse, interpret and disseminate information relating to nutrition, food, agriculture and development¿, according to Article 1 of its Constitution. Additionally, the paper analyses the state of the art on several Semantic Web technologies, describes the fisheries ontologies lifecycle and explains among other issues, how the FAO editorial workflow for networked ontologies functions. Finally, the article summarizes some of the use cases that model the system¿s functionality as a subset of the features that the NeOn Toolkit offers. Óscar Muñoz-García, who presented the paper, had the opportunity to present the NeOn Toolkit to the Spanish community of Artificial Intelligence.
Internacional
No
Entidad premiada
UPM y FAO
Entidad concedente
CAEPIA 2007
Fecha
15/11/2007
Lugar donde se premió
Salamanca, España

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Participantes

Grupos de investigación, Departamentos, Centros e Institutos de I+D+i relacionados
  • Creador: Grupo de Investigación: Ontology Engineering Group (LIA). Laboratorio Inteligencia Artificial. Grupo de Ingeniería Ontológica
  • Departamento: Inteligencia Artificial