Cluster analysis of Russian Federation subjects by socioeconomic indicators characterizing potential for development of the secondary vocational education system
- Authors: Samtsevich P.I.1, Yankov S.G.2, Kornilova E.V.2
-
Affiliations:
- Researcher
- Institute for the Development of Professional Education
- Issue: Vol 14, No 2 (2025)
- Pages: 143-165
- Section: Articles
- Published: 30.06.2025
- URL: https://journal-vniispk.ru/2070-7568/article/view/304212
- DOI: https://doi.org/10.12731/2070-7568-2025-14-2-300
- EDN: https://elibrary.ru/NOVNIA
- ID: 304212
Cite item
Full Text
Abstract
In the modern world, data is an important basis for making management decisions, coordinating actions, controlling and analyzing processes occurring in society. However, the volumes of data characterizing various aspects of contemporary social life are as large as they are complex to process. The subject of research is such an important part of social life as education, specifically training in educational institutions implementing programs of secondary vocational education (hereinafter referred to as SPVO). The rationale for the study stems from the idea that the development of the SPVO system can solve a number of socio-economic problems in regions. The main hypothesis of the study is that knowledge of the socio-economic characteristics of regions allows forming an optimal state policy in the field of SPVO. The objectives of the study were to identify factors influencing the demand for SPVO, conduct cluster analysis of regions using the k-means method, determine and describe cluster profiles, assess the contribution of each factor to shaping the demand for SPVO and its impact on the development of the SPVO system. The methodology of the study involved reducing the dimensionality of the data using principal component analysis. Clusterization was carried out by the k-means method. Euclidean norm was used as a measure of distance between objects within clusters. Clusterization was performed with Python libraries. For conducting cluster analysis, three main components have been identified that characterize the level of population involvement in SPVO studies, quality of life, and engagement in high-productivity industries, migration situation. As a result of the conducted analysis, seven clusters were formed, describing key characteristics determining the level of demand for SPVO. The results of the study systematically summarize the actual socio-economic situation in the regions and describe its influence on regional SPVO systems. They will be useful for executive bodies of Russian Federation subjects responsible for public administration in the sphere of education, federal executive authorities, and scientific institutes. A promising direction for applying the results of this study is optimizing control figures for admissions and adapting them to the socio-economic realities of regions.
About the authors
Pavel I. Samtsevich
Researcher
Author for correspondence.
Email: samtsevich.pi@yandex.ru
independent researcher
Russian Federation, Moscow, Russian FederationSergey G. Yankov
Institute for the Development of Professional Education
Email: s.yankov@firpo.ru
SPIN-code: 2232-3314
Ph.D., Deputy Chief of the Center for Strategic Research
Russian Federation, 25, building 1, Bolshaya Ordynka Str., Moscow, Russian Federation
Elena V. Kornilova
Institute for the Development of Professional Education
Email: forlelik@bk.ru
SPIN-code: 4261-1088
Head of the Department for Scientific and Practical Developments and Strategic Research
Russian Federation, 25, building 1, Bolshaya Ordynka Str., Moscow, Russian Federation
References
- Dozhdikov, A. V., & Kornilova, E. V. (2023). Educational migration of entrants between regions of the Russian Federation as a source of data for planning the development of the higher education system. Higher Education in Russia, 32(3), 67–83. https://doi.org/10.31992/0869-3617-2023-32-3-67-83 EDN: https://elibrary.ru/DUSOSM
- Prokofieva, E. S., & Zaitsev, R. D. (2020). Analysis of patient pathways in medical facilities based on methods of hard and fuzzy clustering. Business Informatics, 14(1), 19–31. https://doi.org/10.17323/2587-814X.2020.1.19.31 EDN: https://elibrary.ru/QLPEAJ
- Mirsoyanov, R. V., Levada, Yu. A., & Neh, Yu. I. (2020). Cluster analysis for studying urban environments. Scientific Interdisciplinary Research, (8-2). Retrieved from https://cyberleninka.ru/article/n/ispolzovanie-klasternogo-analiza-dlya-izueniya-gorodskoy-sredy (Accessed: July 4, 2025)
- Zhdanko, T. A. (2023). Theoretical aspects of cluster approach implementation in education. Bulletin of BGU. Education. Personality. Society, (1), 19–28. https://doi.org/10.18101/2307-3330-2023-1-19-28 EDN: https://elibrary.ru/PNXNHX
- Shamray-Kurbatova, L. V., & Ledeneva, M. V. (2021). Cluster analysis of Russian Federation subjects by level of innovation activity. Business. Education. Law, (1), 88–97. https://doi.org/10.25683/VOLBI.2021.54.174 EDN: https://elibrary.ru/JUDWJI
- Ovsiannikova, R. V. (2018). Cluster analysis in evaluating living standards and quality of life of Russian regions’ populations. Bulletin of Samara State University of Economics, (1), 38–45. EDN: https://elibrary.ru/YTFEOT
- Prokhorenkov, P. A., Reger, T. V., & Gudkova, N. V. (2022). Cluster analysis methods in regional studies. Fundamental Research, (3), 100–106. https://doi.org/10.17513/fr.43221 EDN: https://elibrary.ru/KOVJWZ
- Ullah, M. I., Aslam, M., & Altaf, S. (2016). mctest: An R package for detection of collinearity among regressors. The R Journal, 8(2), 495–505. https://doi.org/10.32614/RJ-2016-062
- Kuchumov, I. V. (2024). Theoretical foundations of data clustering methods in intelligent analysis. Digital Economy, (1(27)), 69–77. https://doi.org/10.34706/DE-2024-01-08 EDN: https://elibrary.ru/FLUZST
- Arutyunov, Yu. A. (2008). Formation of a regional innovation system based on the cluster model of regional economy. Corporate Governance and Innovative Development of Northern Economies: Bulletin of the Research Centre for Corporate Law, Management and Venture Investment of Syktyvkar State University, (4), 6–24. EDN: https://elibrary.ru/MSMBBF
- Bondarenko, N. V. (2017). Analysis of interaction between medium professional education system and employers using mass occupations and specialties: Information bulletin. Moscow: Higher School of Economics. 48 p.
- Zhilov, R. A. (2023). Intelligent data clustering methods. Bulletin of Kabardino-Balkarian Scientific Centre of RAS, (6), 152–159. https://doi.org/10.35330/1991-6639-2023-6-116-152-159 EDN: https://elibrary.ru/LBDSYZ
- Gumerov, M. F. (2017). Systematic approach to medium professional and higher economic education in modern conditions. Modern Problems of Social Work, 3(4), 90–97. https://doi.org/10.17922/2412-5466-2017-3-4-90-97 EDN: https://elibrary.ru/XNPJZZ
- Merzlyakov, A. A., & Bogdanov, V. S. (2015). Practice of distant online research in the ontological field of problems of management sociology (remote analysis of cluster policy implementation in Russian regions). Bulletin of the Academy of Law and Administration, (2), 207–230. EDN: https://elibrary.ru/TSEKLR
- Gavrilov, A. V., & Stadnik, Ya. V. (2024). Cluster approach in medium professional education for preparing teaching staff within the framework of the federal project "Professionalitet." Pedagogical Journal, 14(5A), 111–123. EDN: https://elibrary.ru/FHBYIQ
- Stafeeva, A. A. (2017). Demand for medium professional education among modern high school students. Youth and Science: Current Issues of Pedagogy and Psychology, (2), 183–187. EDN: https://elibrary.ru/QMPJMP
- Wang, D. D. (2019). Performance-based resource allocation for higher education institutions in China. Socio-Economic Planning Sciences, 65(C), 66–75.
Supplementary files
