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Conceptualising ‘macro-regions’: Viewpoints and tools beyond NUTS classification

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  • Ladias, Christos
  • Hasanagas, Nikolaos
  • Papadopoulou, Eleni

Abstract

Definitions are imposed but properties not. The basic question addressed by this paper is how to ‘detect’ objective socio-economic spatial structures instead of ‘defining’ them arbitrarily. The NUTS classification model is rather arbitrary. Not only have the administrative units been structured through ‘accidental’ historical conditions but the reliability of the measurement of the population in an area is disputable as long as the mobility is strengthened and the ‘usual residence’ becomes more and more vague. Concerning the auxiliary criteria, they are also heterogeneous and are rather perceptions imposed by decision makers than physical entities. The quantitative network analysis (QNA) approach is suggested as a tool to detect macro-structures regarded as socio-economic and natural infrastructure of a ‘macro-region’. This is based on algebraic analysis of a number of variables such as flows of people migration, financial means, information, commodities, bio-diversity elements and parameters of the new relationship between urban and rural areas. In this paper, by using algorithms of QNA, such as Density of flows or Betweenness centrality of places, ‘denser” or more “central’ places can be differentiated from others, and thus can be used for a more substantial demarcation of ‘macro-regions’.

Suggested Citation

  • Ladias, Christos & Hasanagas, Nikolaos & Papadopoulou, Eleni, 2011. "Conceptualising ‘macro-regions’: Viewpoints and tools beyond NUTS classification," Studies in Agricultural Economics, Research Institute for Agricultural Economics, vol. 113(2), pages 1-7.
  • Handle: RePEc:ags:stagec:119649
    DOI: 10.22004/ag.econ.119649
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    References listed on IDEAS

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    1. Ilirjana ZYBERI & Antoneta POLO, 2021. "Impact Of Service And E-Service Quality, Price And Image On The Trust And Loyalty Of The Electronic Banking Customers," Regional Science Inquiry, Hellenic Association of Regional Scientists, vol. 0(1), pages 59-68, June.
    2. Christos AMOIRADIS & Mariya STANKOVA & Efstathios VELISSARIOU & Christos Ap. LADIAS, 2021. "Sustainability Analysis Of Greece'S Promotion As A Tourism Destination," Regional Science Inquiry, Hellenic Association of Regional Scientists, vol. 0(2), pages 227-238, June.

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