AUTOCORRELATION MODEL OF HIGH TECHNOLOGICAL EXPORT OF REGIONS OF THE RUSSIAN FEDERATION

Authors

  • Sergey S. Krasnykh Ural Division of the Russian Academy of Sciences, Ekaterinburg

Keywords:

high-tech export, Russian regions, local Moran’s index, global Moran’s index, spatial autocorrela-tion

Abstract

Based on the data of the Federal Customs Service and the Russian Export Center, the article analyzes the state of export of high-tech products of the regions of the Russian Federation. Using techniques of spatial econometrics –global and local Moran’s index, the clusters of concentration of high and low values of high-tech exports as well as the poles of growth that can act as a catalyst for growth in neighboring regions are identified.

Author Biography

Sergey S. Krasnykh, Ural Division of the Russian Academy of Sciences, Ekaterinburg

Junior Researcher, Laboratory for Modeling Spatial Development of Territories, Institute of Economics

References

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Published

2021-08-24

Issue

Section

Regional economy