Economía del dato: luces y sombras
- 1 ICMAT-CSIC
ISSN: 0422-2784
Año de publicación: 2022
Título del ejemplar: Economía del dato
Número: 423
Páginas: 15-24
Tipo: Artículo
Otras publicaciones en: Economía industrial
Resumen
En este trabajo se exponen algunas luces y sombras de la Economía del Dato usando ejemplos provenientes de proyectos orientados a la economía pública. Se identifican además algunos principios importantes y direcciones relevantes para el futuro de esta disciplina
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