RuEn

Journal section "Regional economics"

Clustering Russian Federation Regions According to the Level of Socio-Economic Development with the Use of Machine Learning Methods

Ketova K.V., Kasatkina E.V., Vavilova D.D.

Volume 14, Issue 6, 2021

Ketova K.V., Kasatkina E.V., Vavilova D.D. Clustering Russian Federation regions according to the level of socio-economic development with the use of machine learning methods. Economic and Social Changes: Facts, Trends, Forecast, 2021, vol. 14, no. 6, pp. 70–85. DOI: 10.15838/esc.2021.6.78.4

DOI: 10.15838/esc.2021.6.78.4

Abstract   |   Authors   |   References
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