Preview

Administrative Consulting

Advanced search

Artificial Intelligence in Models for Regional Management of Socio-Economic Processes

EDN: VCDVUF

Abstract

This paper analyzes methodological approaches for creating an info-technological platform for “digital portraits” of complex socioeconomic systems using the example of regional systems in Russia, as a necessary element of strategic management of the national development goals achievement.

To address the challenges associated with creating digital portraits, practical applications of Data mining technologies, artificial intelligence algorithms, mathematical statistics, linear algebra, and cluster and economic factor analysis are identified. Based on these approaches, models are proposed for the digital transformation of regional socioeconomic management systems.

About the Author

N. T. Trotsenko
Research Institute for Social Systems at M.V. Lomonosov Moscow State University
Russian Federation

Anatoly N. Trotsenko, Doctor of Physics and Mathematics

Moscow



References

1. Adamov V. E. Factor index analysis (methodology and problems). Moscow: Statistika Publishing House, 1977. 200 p. (In Russ.).

2. Akaev A. A., Ichkitidze Yu. R., Petryakov A. A., Sarygulov A. I. Digital transformation of the economy: empirical facts and mathematical models. St. Petersburg: Publishing and Printing Association of Higher Educational Institutions, 2020. 336 p. (In Russ.).

3. Akaev A. A., Sadovnichy V. A. The human factor as a determinant of labor productivity in the era of the digital economy // Problems of Forecasting [Problemy prognozirovaniya]. 2021. N 1 (184). P. 45–58. DOI 10.47711/0868-6351-184-45-58. EDN WFYDGO. (In Russ.).

4. Beloglazov D. A. Features of neural network solutions, advantages and disadvantages, application prospects // Bulletin of the Southern Federal University. Technical sciences [Izvestiya Yuzhnogo federalʹnogo universiteta. Tekhnicheskie nauki]. 2008. Vol. 84, N 7. P. 105–110. EDN KAPCWZ. (In Russ.).

5. Blumin S. L., Sukhanov V. F., Chebotarev S. V. Economic factor analysis. Lipetsk: Publishing house of the Lipetsk Ecological and Humanitarian Institute. 2004. 148 p. (In Russ.).

6. Vinogradova N. M. Theory of indexes. Moscow: Gostekhizdat, 1930. 200 p. (In Russ.).

7. Duke V. A., Flegontov A. V., Fomina I. K. Application of data mining technologies in the natural sciences, engineering and humanitarian fields // Bulletin of the Herzen State Pedagogical Univ. of Russia [Izvestiya RGPU im. A. I. Gertsena]. 2011. N 138. P. 77–83. EDN NDNWEJ. (In Russ.).

8. Eliseeva I. I., Knyazevsky V. S., Nivorozhkina L. I., Morozova Z. A. Theory of statistics with the basics of probability theory. Moscow: Finance and Statistics, 2002. 400 p. (In Russ.).

9. Efanov V. A., Chaadaev V. K., Shlyakhov A. S. Strategizing the digital transformation of an industrial enterprise (on the example of the Russian Television and Radio Broadcasting Network Federal State Unitary Enterprise) // Industrial Economics [Ekonomika promyshlennosti]. 2023. Vol. 16, N 1. P. 95–104. DOI 10.17073/2072-1633-2023-1-95-104. EDN ADVHOJ. (In Russ.).

10. Zhuravlev D. M. Strategizing the Digital Transformation of Complex Socioeconomic Systems / edited by V. L. Kvint. St. Petersburg: NWIM of RANEPA, 2024. (Series “Strategist’s Library”). 352 p. (In Russ.).

11. Zhuravlev D. M., Trotsenko A. N., Chaadaev V. K. Methodology and Tools for Strategizing the Socioeconomic Development of a Region // Industrial Economics [Ekonomika promyshlennosti]. 2022. Vol. 15, N 2. P. 131–142. DOI 10.17073/2072-1633-2022-2-131-142. EDN IAXLHE. (In Russ.).

12. Zhuravlev Yu. I., Ryazanov V. V., Senko O. V. Recognition. Mathematical Methods. Software System. Practical Applications. Moscow: Phazis Publishing House. 2006. 176 p. (In Russ.).

13. Zhuravlev Yu. I., Flerov Yu. A., Vyalyi M. N. Fundamentals of Higher Algebra and Coding Theory. Moscow: Publishing House of the Faculty of Management and Applied Mathematics of the Moscow Institute of Physics and Technology, 2019. 308 p. (In Russ.).

14. Zamkov O. O., Tolstopiatenko A. V., Cheremnykh I. N. Mathematical Methods in Economics. Moscow: Delo i Servis Publishing House, 1997. 368 p. (In Russ.).

15. Ivchenko G. I., Medvedev Yu. I. Mathematical Statistics: Textbook. Moscow: LIBROKOM Publishing House, 2014. 352 p. (In Russ.).

16. Ismagilov I. I., Kadochnikova E. I., Kostromin A. V. Econometrics. Kazan: Kazan University Publishing House, 2014. 235 p. (In Russ.).

17. Kapelyushnikov R. I. Artificial Intelligence and the Problem of Singularity in Economics // Preprint WP3. 2025.01. Series WP3 “Problems of the Labor Market”. Moscow: Publishing House of the Higher School of Economics, 2025. 67 p. (In Russ.).

18. Kleiner G. B. Production Functions. Theory, Methods, Application. Moscow: Finance and Statistics Publishing House, 1986. 238 p. (In Russ.).

19. Kremer N. Sh., Putko B. A. Econometrics: Textbook for Universities. Moscow: UNITY-DANA Publishing House, 2004. 311 p. (In Russ.).

20. Lapteva E. A., Navdaeva S. N., Irkhina L. N. Statistics: Index Method of Analysis: Tutorial. Nizhny Novgorod: Publishing house of Nizhny Novgorod State Technical University, 2022. 164 p. (In Russ.).

21. Melikyan A. A. Application of the index method in the study of regional digital differentiation // Innovations and Investments [Innovatsii i investitsii]. 2025. N 3. P. 406–409. EDN GINLLH. (In Russ.).

22. Nekipelov A. D. On the economic strategy and economic policy of Russia in modern conditions // Scientific works of the VEO of Russia [Nauchnye trudy VEO Rossii]. 2021. Vol. 230, N 4. P. 76–89. DOI 10.38197/2072-2060-2021-230-4-76-89. EDN MHLEYL. (In Russ.).

23. Nekipelov A. D. From neutralization of external shocks to sustainable long-term development // Scientific works of the VEO of Russia [Nauchnye trudy VEO Rossii]. 2024. Vol. 248, N 4. P. 130–142. DOI 10.38197/2072-2060-2024-248-4-130-142. EDN IMGYWO. (In Russ.).

24. Obukhov A. M. On statistical orthogonal expansions of empirical functions // Bulletin of the USSR Academy of Sciences. Series: Geophysics [Izvestiya AN SSSR. Ser. Geofizika]. 1960. N 3. P. 432–439. (In Russ.). 25. Ovsyannikov G. N. Factor analysis in an accessible presentation: Study of multiparameter systems and processes. Moscow: LIBROKOM Publishing House, 2025. 176 p. (In Russ.).

25. Orlov A. I. Artificial Intelligence: Statistical Methods of Data Analysis: Textbook. Moscow: IPR Media Publishing House, 2022. 843 p. (In Russ.).

26. Regions of Russia: Socioeconomic Indicators. Moscow: Rosstat, 2020. 1242 p. (In Russ.).

27. Trofimova E. A., Kislyak N. V., Gilev D. V. Probability Theory and Mathematical Statistics: Textbook. Yekaterinburg: Ural University Press, 2018. 160 p. (In Russ.).

28. Uspensky A. B., Romanov S. V., Trotsenko A. N. Application of the Principal Component Analysis for the Analysis of High-Resolution IR Spectra Measured from Satellites // Research of the Earth from Space [Issledovaniya Zemli iz kosmosa]. 2003. N 3. Р. 26–33. EDN OOCSXX. (In Russ.).

29. Aggarwal Charu C. Neural Networks and Deep Learning: A Textbook, Second Edition, 2023. Springer Cham, 2024. 529 р.

30. Breiman L. Bagging Predictors // Machine Learning. 1996. № 24. P. 123–140.

31. Cook R. D., Weisberg S. Residuals and Influence in Regression. New York: Chapman and Hall, 1982. 230 р.

32. Goodfellow I., Bengio Y., Courville A. Deep Learning (Adaptive Computation and Machine Learning series). The MIT Press, 2016. 800 р.

33. Kao Yi-Hao, Van Roy B. Directed Principal Component Analysis // Operations Research. 2014. Vol. 62, N 4. P. 957–972.

34. McAuley J. Personalized Machine Learning. Cambridge University Press, 2022. 326 р.

35. Stephens-Davidowitz S. Everybody Lies: Big Data, New Data, and What the Internet Can Tell Us About Who We Really Are. Dey Street Books, 2018. 352 р.

36. Zaki, M. J., Wagner Meira Jr. Data Mining and Machine Learning: Fundamental Concepts and Algorithms. Second Edition. Publisher: Cambridge University Press. 2020. 766 p.


Review

For citations:


Trotsenko N.T. Artificial Intelligence in Models for Regional Management of Socio-Economic Processes. Administrative Consulting. 2026;(1):99-117. (In Russ.) EDN: VCDVUF

Views: 80

JATS XML

ISSN 1726-1139 (Print)
ISSN 1816-8590 (Online)