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Investigating Spatial Inequalities: Mobility, Housing and Employment in Scandinavia and South-East Europe1 January 2019, Pages 197-216

A Multiple Criteria Approach to Interregional Migrations - The Case of Serbia
  (Book Chapter)

  • Arandarenko, M.,
  • Corrente, S.,
  • Jandrić, M.,
  • Stamenković, M.
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  • aUniversity of Belgrade, Serbia
  • bUniversity of Catania, Italy
  • cUniversity of Belgrade, Serbia
  • dUniversity of Belgrade, Serbia

Abstract

Large regional disparities lead, among other things, to significant internal migration flows. Internal migrations, on the other hand, reinforce existing regional disparities by causing a lack of human capital in underdeveloped regions. In this chapter, we apply the Multiple Criteria Decision Aiding (MCDA) sorting method, ELECTRE Tri-C, to determine the current internal migration potential for districts in Serbia. The method will provide four classes of migration potential, ranging from strong emigration to strong immigration potential, based on the main drivers of internal migration. The main determinants of internal migration flows fall into three groups: (1) economic and labour market indicators, (2) demographic indicators and (3) housing market and amenities indicators. © 2020 Selection and editorial matter.

Author keywords

ELECTRE Tri-CInternal migrationmultiple criteria decision aidingSerbia districtssorting problemSRF method
  • ISBN: 978-178973941-1;978-178973942-8
  • Source Type: Book
  • Original language: English
  • DOI: 10.1108/978-1-78973-941-120191012
  • Document Type: Book Chapter
  • Publisher: Emerald Group Publishing Ltd.


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