Economía artificialuna valoración crítica

  1. Segismundo Izquierdo 1
  2. Luis Izquierdo 2
  3. José Galán 2
  4. José Santos 2
  1. 1 Universidad de Valladolid
    info

    Universidad de Valladolid

    Valladolid, España

    ROR https://ror.org/01fvbaw18

  2. 2 Universidad de Burgos
    info

    Universidad de Burgos

    Burgos, España

    ROR https://ror.org/049da5t36

Revue:
Revista de métodos cuantitativos para la economía y la empresa

ISSN: 1886-516X

Année de publication: 2016

Volumen: 22

Pages: 36-54

Type: Article

D'autres publications dans: Revista de métodos cuantitativos para la economía y la empresa

Résumé

Artificial Economics is one of the fastest growing approaches to analyse complex socio-economic systems. In this paper we present our views on the distinguishing features of Artificial Economics and on its relation with Theoretical Economics — the field that in our opinion lies closest to Artificial Economics. In this context, we discuss various reasons why conducting research on Artificial Economics may be worthwhile, and provide general guidelines on how to go about it. Our view is that Artificial Economics and Theoretical Economics share the same goals, do not differ conceptually as much as it is sometimes perceived, and their approaches are certainly complementary.

Information sur le financement

También queremos agradecer el apoyo recibido del Ministerio de Ciencia e Innovación del Reino de España a través del proyecto CSD2010-00034 (SIMULPAST).

Financeurs

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