Advanced Data Informatics
https://doi.org/10.26794/3030-7097-2026-2-2-63-71
Abstract
This article proposes a solution to the problem of socioeconomic synthesis of big data using informatics. The dimensionality of economic processes converges with the dimensionality of social processes, which is a novel feature of the research object of leading data. It reframes the subject of research as the intersection of econometrics and sociology in informatics, transforming methods of socioeconomic analysis, and searching, processing, and analytical presentation of big data. The article examines the socioeconomic aspects of updating leading data and informatics as a platform for transforming econometric methods for synthesizing big data. The conclusions advance the idea of big data technology to the forefront of economics and management, and presents fundamental methodological, organizational, and technical measures for introducing leading data technology into new, higher economic paradigms.
About the Authors
I. Yu. VajasRussian Federation
Igor Yu. Varjas — Dr. Sci. (Econ.), Head of the Analytical Centre for Financial Research
Moscow
T. F. Burova
Russian Federation
Tatiana F. Burova — Researcher at the Analytical Center for Financial Research
Moscow
D. V. Klimonov
Russian Federation
Daniil V. Klimonov —Analyst of the Analytical Centre for Financial Research; Ph.D. Student of the Moscow University “Synergy”
Moscow
References
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Review
For citations:
Vajas I.Yu., Burova T.F., Klimonov D.V. Advanced Data Informatics. Digital Solutions and Artificial Intelligence Technologies. 2026;2(2):63-71. (In Russ.) https://doi.org/10.26794/3030-7097-2026-2-2-63-71
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