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Employment in the Digital Economy Development: Regional Clustering

Author

Listed:
  • Guzel Salimova

    (Federal State Budgetary Educational Establishment of Higher Education “Bashkir State Agrarian University”)

  • Alisa Ableeva

    (Federal State Budgetary Educational Establishment of Higher Education “Bashkir State Agrarian University”)

  • Rasul Gusmanov

    (Federal State Budgetary Educational Establishment of Higher Education “Bashkir State Agrarian University”)

  • Aidar Sharafutdinov

    (Federal State Budgetary Educational Establishment of Higher Education “Bashkir State Agrarian University”)

  • Gulnara Nigmatullina

    (Federal State Budgetary Educational Establishment of Higher Education “Bashkir State Agrarian University”)

Abstract

The relationship between the digital economy and the situation on the labor market in the regions has been studied. The regions of the Volga Federal District of the Russian Federation were grouped using the method of multidimensional cluster analysis based on a set of indicators characterizing the state of the labor market, indicators of the development of the digital economy. A hierarchical dendrogram was constructed for 14 regions of the Volga Federal District of the Russian Federation. The data showed that the development of digitalization of processes in organizations had little effect on the level of employment and unemployment.

Suggested Citation

  • Guzel Salimova & Alisa Ableeva & Rasul Gusmanov & Aidar Sharafutdinov & Gulnara Nigmatullina, 2024. "Employment in the Digital Economy Development: Regional Clustering," Public Organization Review, Springer, vol. 24(1), pages 141-160, March.
  • Handle: RePEc:kap:porgrv:v:24:y:2024:i:1:d:10.1007_s11115-023-00746-w
    DOI: 10.1007/s11115-023-00746-w
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