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Assessment of the Attractiveness of Large Russian Cities for Residents, Tourists, and Business

Author

Listed:
  • R. V. Fattakhov

    (Department of Public Finance of the Financial University under the Government of the Russian Federation)

  • M. M. Nizamutdinov

    (Institute for Socioeconomic Research, Ufa Federal Research Center, Russian Academy of Sciences)

  • V. V. Oreshnikov

    (Institute for Socioeconomic Research, Ufa Federal Research Center, Russian Academy of Sciences)

Abstract

— The article proposes an approach to assessing the attractiveness of large cities of the Russian Federation for residents, businesses, and tourists. As part of the development of this approach, particular parameters of the attractiveness of cities for individual economic agents were determined and an integral indicator was calculated. The hypothesis of the study is based on the fact that high positions of a city in a particular rating do not always guarantee its leadership in other areas; however, in general, the differentiation of places in case of a particular city is more inherent to ratings outsiders than to leading cities. Systemic analysis; factorial, statistical, structural, and dynamic analysis; classification, correlation, and regression analysis; and economic and mathematical modeling were used as research tools. The approach was tested on data for large Russian cities. Both sets of particular indicators characterizing certain areas of research and the approach to forming an integral indicator of the level of attractiveness of cities necessary for a generalized assessment have been determined. The presented results generally confirm the proffered hypothesis. In modern conditions, public authorities should pay special attention not only to the development of individual cities, but to the integrated development of the spatial framework of a territory where cities play a decisive role. The proposed approach to assessing the level of attractiveness of Russian cities makes it possible to obtain logical meaningful results that can be applied to solve problems in these areas.

Suggested Citation

  • R. V. Fattakhov & M. M. Nizamutdinov & V. V. Oreshnikov, 2020. "Assessment of the Attractiveness of Large Russian Cities for Residents, Tourists, and Business," Regional Research of Russia, Springer, vol. 10(4), pages 538-548, October.
  • Handle: RePEc:spr:rrorus:v:10:y:2020:i:4:d:10.1134_s2079970520040036
    DOI: 10.1134/S2079970520040036
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    References listed on IDEAS

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    1. Gianni Amisano & John Geweke, 2017. "Prediction Using Several Macroeconomic Models," The Review of Economics and Statistics, MIT Press, vol. 99(5), pages 912-925, December.
    2. G. B. Kleiner, 2014. "Systemic Management In A Transforming Economð£," Strategic decisions and risk management, Real Economy Publishing House, issue 5.
    3. Allen J. Scott & Michael Storper, 2015. "The Nature of Cities: The Scope and Limits of Urban Theory," International Journal of Urban and Regional Research, Wiley Blackwell, vol. 39(1), pages 1-15, January.
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