Inteligencia artificialuna aproximación desde las finanzas

  1. Zubillaga Rego, Agustín
  2. Pastor López, Iker
  3. García Bringas, Pablo
Revue:
Boletín de estudios económicos

ISSN: 0006-6249

Année de publication: 2020

Titre de la publication: Fintech

Volumen: 75

Número: 229

Pages: 99-117

Type: Article

D'autres publications dans: Boletín de estudios económicos

Résumé

Artificial intelligence is a set of techniques that allow the automatic development of cognitive activities specific to human beings. Although they were developed several decades ago, in the context of the digital revolution they have been acquiring greater relevance in many industries, including finance. The application of this set of techniques allows for the solution of many types of specific problems and the generation of new business models, which is becoming a competitive advantage for companies. However, as with any technology, its application presents equally profound and far-reaching challenges that will need to be addressed in the coming years.

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