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Regional Economics: Theory and Practice
 

The role of global digitalization and artificial intelligence technology development in formulating the strategic profile of innovative subsystem of the territorial socio-economic system

Vol. 17, Iss. 12, DECEMBER 2019

Received: 20 August 2019

Received in revised form: 21 September 2019

Accepted: 29 October 2019

Available online: 13 December 2019

Subject Heading: THEORIES OF REGIONAL ECONOMY

JEL Classification: E32, O31, O33, O38, R11

Pages: 2230–2242

https://doi.org/10.24891/re.17.12.2230

Akhmetov T.R. Institute of Socio-Economic Research, Ufa Federal Research Centre of Russian Academy of Sciences, Ufa, Republic of Bashkortostan, Russian Federation
docant73@mail.ru

https://orcid.org/0000-0002-3857-6174

Subject The article addresses the role and importance of global digitalization and artificial intelligence technology in the strategy for innovation subsystem development of the territorial socio-economic system.
Objectives The purpose is to disclose relationships of innovation-driven growth of countries and their regions with other regions and countries, considering the development of information base of the economic system.
Methods The study employ data analysis methods.
Results The classification of Russian regions, taking into account the factors of digitalization and artificial intelligence technologies, has shown the multilevel nature of relations between the center and the periphery. These factors are concentrated in metropolitan centers and their agglomerations.
Conclusions The essence of integration processes in the global economy depends on the information base of countries of the global center and of catch-up development due to the global periphery. It is crucial to adjust the scientific and technological policy of Russian government.

Keywords: innovation, evolution, evolutionary model, cycle

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