La proximidad geográfica en el contagio del fracaso empresarial en la pymeUna aplicación empírica con el modelo probit espacial

  1. CHRISTIAN C. RODRÍGUEZ FUENTES 1
  2. MARILUZ MATÉ SÁNCHEZ-VAL 1
  3. FERNANDO A.LÓPEZ HERNÁNDEZ 1
  1. 1 Universidad Politécnica de Cartagena
    info

    Universidad Politécnica de Cartagena

    Cartagena, España

    ROR https://ror.org/02k5kx966

Revue:
Estudios de economía aplicada

ISSN: 1133-3197 1697-5731

Année de publication: 2016

Titre de la publication: Datos, información y conocimiento en Economía

Volumen: 34

Número: 3

Pages: 629-648

Type: Article

DOI: 10.25115/EAE.V34I3.3063 DIALNET GOOGLE SCHOLAR lock_openDialnet editor

D'autres publications dans: Estudios de economía aplicada

Résumé

This paper tests the role of spillover effects derived from the geographic proximity among reduced size firms in business failure. To get this purpose, we develop an empirical application on a sample of 2.710 Spanish Small, Medium size Enterprises (SMEs) located in the region of Murcia. With this information, we estimate a spatial probit regression model to contrast the significance of business spillover effects in business failure models. Our results show that the probability of business failure in SMEs depends not only on its own characteristics but also on the probability of failure of geographically close firms. Factors associated with social and/or economic interactions among the agents linked to the different firms in the same region would be behind these results.

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