Un análisis de los factores más significativos en la contratación de distintos productos financieros por parte de las familias en España

  1. Llorent Jurado, Julián 1
  2. Ordaz Sanz, José Antonio 1
  3. Melgar Hiraldo, Mª Carmen 1
  4. Guerrero Casas, Flor María 1
  1. 1 Universidad Pablo de Olavide
    info

    Universidad Pablo de Olavide

    Sevilla, España

    ROR https://ror.org/02z749649

Aldizkaria:
Anales de ASEPUMA

ISSN: 2171-892X

Argitalpen urtea: 2018

Zenbakia: 26

Mota: Artikulua

Beste argitalpen batzuk: Anales de ASEPUMA

Laburpena

On December 2017, Spanish families’ savings in financial assets got to 262 billion in investment funds, 111 billion euros in pension funds and 4 billion euros in life insurance primes. The relevance of these data suggests an approach to the study of main factors that may have influence in Spanish family units of hiring these financial products. Some techniques of multivariate analysis, as well as Financial Survey of Families of the Bank of Spain, may be very useful to achieve this aim.

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