Big Data y nuevas geografíasla huella digital de las actividades humanas

  1. Gutiérrez Puebla, Javier 1
  1. 1 Universidad Complutense de Madrid
    info

    Universidad Complutense de Madrid

    Madrid, España

    ROR 02p0gd045

Revista:
Documents d'anàlisi geogràfica

ISSN: 0212-1573 2014-4512

Año de publicación: 2018

Título del ejemplar: Miscel·lani

Volumen: 64

Número: 2

Páginas: 195-217

Tipo: Artículo

DOI: 10.5565/REV/DAG.526 DIALNET GOOGLE SCHOLAR lock_openAcceso abierto editor

Otras publicaciones en: Documents d'anàlisi geogràfica

Resumen

Le terme Big Data est devenu populaire ces dernières années et il se réfère à la production d’énormes quantités de données. L’activité humaine est captée par une multitude de réseaux de capteurs et de dispositifs, laissant ainsi une empreinte digitale. L’analyse de cette empreinte présente un grand potentiel pour l’étude géographique du comportement humain. Cet article décrit les principales caractéristiques du Big Data et il souligne l’importance des données massives pour la science et en particulier pour la géographie, en se concentrant sur l’étude des modèles spatio-temporels de l’activité humaine.

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