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Economía del dato: luces y sombras

    1. [1] ICMAT-CSIC
  • Localización: Economía industrial, ISSN 0422-2784, Nº 423, 2022 (Ejemplar dedicado a: Economía del dato), págs. 15-24
  • Idioma: español
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  • Resumen
    • español

      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

    • English

      This paper presents several lights and shadows from Data Economy through examples from projects oriented towards Public Economics. Several relevant principles and relevant future research directions are identified.

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