Statistical Data Research on Staff Training for the Digital Economy in the Russian Federation

Author:

Frolov Yu. V.1,Bosenko T. M.1

Affiliation:

1. Moscow City Pedagogical University

Abstract

The article analyzes the statistical data relating to training specialists for digitalized economy by secondary vocational and higher education institutions. The purpose of the study was to develop and test personnel support indices for digitalization of the economy, as well as to identify social and economic factors that significantly affect the level of personnel support for the processes of digital transformation of the economy. The authors applied data from the official statistical reporting of the Russian Federation. The proposed staffing indices were modeled as objective functions depending on socio-economic factors characterizing the development of the economy in different dimensions. At the same time, the indices themselves were calculated as values in which the parameters of the output of digital specialists and their relevance in the economy were correlated. In the course of the study, a comparison of statistical and neural network data modeling methods and generalizing indices was performed. An analysis of the obtained regression models and an analysis of the sensitivity of trained neural networks made it possible to evaluate their accuracy in predicting the trends in the staffing of the digital economy and to identify factors that significantly affect the achievement of the goal of matching the output of specialists and the demands of economic sectors.

Publisher

Moscow Polytechnic University

Subject

Sociology and Political Science,Education

Reference18 articles.

1. Decree of the President of the Russian Federation of 05.09.2017 N 203 [On the Strategy for the Development of the Information Society in the Russian Federation for 2017–2030]. Available at: http://www.kremlin.ru/acts/bank/41919 (accessed 09.10.2021). (In Russ.).

2. Passport of the National Program [Digital Economy of the Russian Federation] (2018). Approved by the Presidium of the Council under the President of the Russian Federation for Strategic Development and National Projects dated December 24, 2018. No. 16. Available at: https://base.garant.ru/72190282/#friends (accessed 09.10.2021). (In Russ.).

3. Frolov, Y.V., Bosenko, T.M. (2020). Training of Personnel for the Development of Innovative Entrepreneurship. Academy of Entrepreneurship Journal. Vol. 26, no. 1, pp. 1-6. Available at: https://www.abacademies.org/articles/training-of-personnel-for-the-development-of-innovative-entrepreneurship-9065.html (accessed 09.10.2021).

4. Asadullina, A.V. (2018). Digital Economy in Russia: Current Status and Development Problems. Rossiiskii vneshneekonomicheskii vestnik = Russian Foreign Economic Journal. No. 6, pp. 98-112, doi: 10.24411/2072-8042-2018-00060 (In Russ., abstract in Eng.).

5. Competing in the Digital Age: Policy Implications for the Russian Federation (2018). Report on the Development of the Digital Economy in Russia. World Bank, 176 p. Available at: https://www.worldbank.org/en/country/russia/publication/competing-in-digital-age (accessed 09.10.2021).

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