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Application of multiparametric methods of data science for the classification of Russian subjects on the basis of subsidisation

https://doi.org/10.26425/2309-3633-2024-12-3-58-73

Abstract

The relevance of the study is justified by the importance of monitoring and forecasting the subsidisation of the Russian regions in order to identify the main criteria for classifying subjects on the basis of subsidisation. In a brief review of the literature, mathematical models used to model the subsidisation of the Russian regions are considered. They have mainly fixed socio-economic indicators that need to be given attention while applying, and also regression models are used, but mathematically sound recommendations for the withdrawal of regions from clusters of subsidisation are not provided. The paper analyses the socio-economic and demographic indicators of the Russian regions applying methods that identify patterns in a multiparametric dataset. The methods of traditional statistical analysis and machine learning, including the author’s ones, are used. Statistically significant patterns have been identified, reflecting the relationship of subsidisation with such indicators as investments in fixed capital, fixed assets, average per capita income and average size of assigned pensions, unemployment rate, etc. The performed logical and statistical analysis strongly supports the use of machine learning (Data Science) methods in identifying statistically significant relationships between various indicators characterising the development of the regions of the Russian Federation.

About the Authors

A. V. Kuznetsova
N.M. Emanuel Institute of Biochemical Physics of the Russian Academy of Sciences
Russian Federation

Anna V. Kuznetsova, Cand. Sci. (Biol.), Senior Researcher at the Laboratory of Mathematical Biophysics

4, Kosygina ul., Moscow 119334



L. R. Borisova
Financial University under the Government of the Russian Federation
Russian Federation

Lyudmila R. Borisova, Cand. Sci. (Phys. and Math.), Assoc. Prof. at the Mathematics Department

49, Leningradsky prospekt, Moscow 125993



V. M. Khadartsev
State enterprise “TSNIITEITYAZHMASH”
Russian Federation

Valeriy M. Khadartsev, Cand. Sci. (Econ.), Director

17, str. 1, Troitskaya ul., Moscow 123090



References

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Review

For citations:


Kuznetsova A.V., Borisova L.R., Khadartsev V.M. Application of multiparametric methods of data science for the classification of Russian subjects on the basis of subsidisation. UPRAVLENIE / MANAGEMENT (Russia). 2024;12(3):58–73. (In Russ.) https://doi.org/10.26425/2309-3633-2024-12-3-58-73

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ISSN 2309-3633 (Print)
ISSN 2713-1645 (Online)