System analysis in the sociocultural field: Features, structure, and model support
https://doi.org/10.33293/1609-1442-2025-28(4)-36-51
EDN: UBWIHW
Abstract
The main leitmotiv of the present article is to answer the question, how to give these systematic abilities to young people who graduate the national universities today. The actual aim of the present article is more specific. It is provided with answering this question in the case of the students of humanitarian educational branches. Because in their educational plans the disciplines provided with system area have very little representation. In order to reach the formulated aim in the present article we offer the decisions of the following tasks. Dentifying the gist of social cultural systems as a problem area for the professional activities of the humanitarian specialists, finding these systems’ specifics which make difficulties for using system analyze in them. Creating detailed algorithmized scheme of using system researches in the studied problem area in order to provide actual topical content for the discipline named “System analyze” for the humanitarian branches. Exploring the modeling base of the system analyzes procedures (in connection with the algorithmized scheme described earlier), making the list of modeling actives (or the kinds of models) used in this process.
About the Author
Ivan N. DrogobytskiyRussian Federation
Dr. Sci. (Economic), Full Professor
References
1. Antamoshkina O.I., Zinina O.V. (2017). Formation of the list of alternatives to the release of competitive civilian products of the defense enterprise. Modern Management Technologies, no. 10 (82), pp. 1–9. (In Russ.)
2. Arnol’d V.I. (2011). «Hard» and «soft» mathematical models. Moscow: Moscow Center for Continuous Mathematical Education. 27 p. (In Russ.)
3. Balatskiy E.V., Ekimova N.A. (2016). Distribution models of a market economy. Terra Economicus, vol. 14, no. 2, pp. 48–69. (In Russ.)
4. Baranov S.V. (2014). Economic models of production functions: history and modernity. International Journal of Applied and Fundamental Research, no. 10–2, pp. 53–57. (In Russ.)
5. Binmor K. (2019). Theory of Games. Very short introduction. Moscow: Delo at RANEPA. 256 p. (In Russ.)
6. Bozhko V.P. (1999). Information technologies in statistics. Ed. by Boshko V.P., Khoroshilov A.V. Moscow: Moscow State University of Economics, Statistics and Informatics (MESI). 111 p. (In Russ.)
7. Bulgakov S.V. (2014). Aggregation of information models. Perspectives of Science and Education, no. 3 (9), pp. 9–13. (In Russ.)
8. Burko R.A., Sokolova V.D. (2019). The choice and justification of the organizational structure of the enterprise. Young Scientist, no. 7, pp. 313–315. (In Russ.)
9. Byvshev V.A. (2008). Econometrics. Moscow: Finance and statistics. 480 p. (In Russ.)
10. Bystrov A.I. (2015). Information systems in the economy (balance tasks). Ufa: Publishing House of the Bashkir Institute of Social Technologies (branch of the Academy of Labor and Social Relations). 90 p. (In Russ.)
11. Vasil’eva L.N., Deeva E.A. (2018). Modeling microeconomic processes and systems. Moscow: KNORUS. 320 p. (In Russ.)
12. Volkov V.V., Kharkhordin O.V. (2008). Practice theory. St. Petersburg: European University in St. Petersburg. 298 p. (In Russ.)
13. Volkova V.N., Denisov A.A. (2012). System theory and system analysis. Moscow: Urait. 679 p. (In Russ.)
14. Gaibova T.V., Pavlovich T.V. (2019) The formation of design alternatives based on an ontological approach. Ontology of Designing, vol. 9, no. 3 (33), pp. 321–332. (In Russ.) DOI: 10.10.18287/2223-9537-2019-9-3-321-332
15. Gorelova G.V. (2013). Cognitive approach to simulation modeling of complex systems. Proceedings of the Southern Federal University. Ser.: Engineering Sciences, no. 3, pp. 239–250. (In Russ.)
16. Danilin A., Slyusarenko A. (2009). Architecture and strategy. “Yin” and “Yan” of the information technology of the enterprise. Moscow: Internet-t-T Inform. Technology. 504 p. (In Russ.)
17. Dzhumigo N.A., Petrova L.I. (2017). Organizational structure as an object of strategic changes. Management of a Modern Organization: Experience, Problems and Prospects, no. 2 (4), pp. 111–118 (In Russ.)
18. Drogobytskaya K.S., Drogobytskiy I.N. (2014). Architectural models of economic systems: University textbook. Moscow: INFRA-M. 310 p. (In Russ.)
19. Drogobytskiy I.N., Drogobytskaya C.S. et al. (2022). System analysis in management. Moscow: KNORUS. 651p. (In Russ.)
20. Drogobytskiy I.N. (2023). System analysis in the economy. (International Electronic Library NIIION). 498 p. (In Russ.)
21. Evdokimov A.O. (2023). Technologies and tools for simulating modeling of information systems. Young Scientist, no. 51 (498), pp. 3–5. (In Russ.) URL: https://moluch.ru/archive/498/109441/
22. Zhigirev N.N., Bochkov A.V., Kuz’minova A.V. (2023). Inversional method for assessing the agreement of consistency of expert opinions. Dependability, vol. 23, no. 4, pp. 15–24. (In Russ.) DOI: 10.21683/1729-2646-2023-23-4-15-24
23. Zukhovitskiy S.I., Radchik I.A. (2017). Mathematical methods of network planning. Moscow: Nauka. 296 p. (In Russ.)
24. Kaziev V.M. (2014). Introduction to analysis, synthesis and modeling of systems. Moscow: Binom, 244 p. (In Russ.)
25. Karpova E.V., Yablokova A.V. (2013). Cognitive approach to simulation modeling of complex systems Proceedings of the Southern Federal University. Ser.: Technical Sciences, no. 3, pp. 293–250. (In Russ.)
26. Kirillov S.P., Borisov A.K., Mironchuk V.A. (2023). Scenario modeling methods in economic modeling. Journal of Applied Research, no. 12, pp. 26–30. (In Russ.)
27. Kirilyuk I.L. (2013). Models of production functions for the Russian economy. Computer Research and Modeling, vol. 5, no. 2, pp. 293–312. (In Russ.)
28. Kleyner G.B. (1986). Production functions. Moscow: Finance and statistics. 239 p. (In Russ.)
29. Kleyner G.B. (2021). System economy: Development steps. Moscow: Publishing House “Scientific Library”. 746 p. (In Russ.)
30. Kleyner G.B. (2021). Economy. Modeling. Mathematics. Selected works. Moscow: CEMI RAS. 856 p. (In Russ.)
31. Kozlov A.S. (2024). Target functions and key functionality of the project management system: approaches to optimization and automation. Currency Regulation. Currency Control, no. 5, pp. 36–47 (In Russ.)
32. Konev K.A., Antonov V.V. et al. (2020). Fundamentals of the concept of ontological modeling of business processes for decision-making problems. Modern high technologies, no. 12–1, pp. 71–77 (In Russ.)
33. Kris A. (2018). Free associations. Method and process. Moscow: Kogito Center. 157 p. (In Russ.)
34. Labsker L.G. (2018). Games theory in the economy. Moscow: KnoRus. 413 p. (In Russ.)
35. Lapteva E.V., Portnova L.V. (2022). Statistical methods of research in the economy. Volgograd: Sphere. 234 p. (In Russ.)
36. Larichev O.I. (2016). Verbal analysis of solutions. Moscow: Nauka. 356 p. (In Russ.)
37. Lebedeva I.P. (2015). Soft models as a form of mathematization of sociological knowledge. Sociological Research, no. 1, pp. 79–84 (In Russ.)
38. Litvak B.G. (2008). Expert information. Methods of obtaining and analysis. Moscow: Radio and Communication. 184 p. (In Russ.)
39. Mamikhin S.V., Shcheglov A.I. (2020). Imitation modeling in ecology, radioecology and radiobiology. Moscow: MaxPress. 60 p. (In Russ.)
40. Mathematical and instrumental methods in modern economic research. (2018). M.: Faculty of Economics of Lomonosov Moscow State University. 232 p. (In Russ.)
41. Muromskiy A.A., Moiseev E.I., Tuchkova N.P. (2016). The application of the analogy method for searching for a scientific information network. Scientific service on the Internet: Works of the XVIII All-Russian Scientific Conference (September 19–24, 2016, Novorossiysk). Moscow: IPM named after M.V. Keldysh. pp. 284–289 (In Russ.)
42. Naumov I.V., Trynov A.V., Safonov A.O. (2020). Scenario modeling of the reproduction of the investment potential of institutional sectors in the regions of the Siberian Federal District. Finance: Theory and Practice, no. 24 (6), pp. 19–37 (In Russ.)
43. Nizhegorodtsev R.M. (2004). Logistic modeling of economic dynamics // Management of Socioeconomic Systems), no. 1, pp. 46–53; no. 2, pp. 52–58 (In Russ.)
44. Oleynikov D.P., Butenko L.N., Oleynikov S.P. (2013). Inversion in decision -making methods. Caspian Journal: Control and High Technologies, no. 2 (22), pp. 146–150 (In Russ.)
45. Ontological modeling of enterprises: Methods and technologies. Yekaterinburg: Publ. House of the Ural Federal University. 236 p. (In Russ.)
46. Pankrukhin S.I. (2010). Situational management concepts. Moscow: Publ. House of the RASS. 319 p. (In Russ.)
47. Pautova L.A. (2007). Associative experiment: experience of sociological application. Sociology: Methodology, Methods, Mathematical Modeling, no. 24, pp. 149–168 (In Russ.)
48. Podinovskiy V.V. (2019). Ideas and methods of theory of importance of criteria in multicriterial decision-making problems. Moscow: Nauka. 103 p. (In Russ.)
49. Pospelov D.A. (1986). Situational management: Theory and practice. Moscow: Nauka. 288 p. (In Russ.)
50. Postnikov V.M. (2020). Analysis of approaches to the formation of an expert group focused on the preparation and adoption of managerial decisions. Education and Science Journal, no. 5, pp. 333–347 (In Russ.)
51. Puzanova Zh.V., Larina T.I. (2017). The use of the association methods to study attitudes to countries. University proceedings. Volga region. Social sciences, no. 1 (41), pp. 98–110 (In Russ.)
52. Radchenko I.A., Nikolaev I.N. (2018). BigData technology and infrastructure. St. Petersburg: ITMO University. 52 p. (In Russ.)
53. Rykalina O.V., Stepanov V.I., Sharapova I.V. (2018). Organizational and structural models of a regional logistics cluster // Russian Entrepreneurship, vol. 19, no. 4, pp. 1213–1228 (In Russ.)
54. Sedykh V.V. (2024). Methods of solving problems of multi-criterial optimization with linear targets. Current Research, no. 16 (198), pp. 66–71 (In Russ.)
55. Sigal A.V. (2017). The theory of games and its economic applications. Moscow: Infra-M. 413 p. (In Russ.)
56. Smolentseva T.E. (2018). Methods for determining the target function of organizational systems. Modeling, Optimization and Information Technology, no. 6 (3), pp. 143–152 (In Russ.) URL: https://moit.vivt.ru/wp-content/uploads/2018/07/Smolenzeva_3_18_1.pdf
57. Suvorov N.V., Treshchina S.V. et al. (2017). Balance and factor models as an instrument of analysis and covering the structure of the economy. Scientific works of the Institute of Economic Forecasting of the Russian Academy of Sciences, vol. 15, pp. 50–75. Moscow (In Russ.)
58. Taler R. (2017). New behavioral economy. Why people violate the rules of the traditional economy and how to make money on this. Moscow: Eksmo. 368 p. (In Russ.)
59. Thaler R., Cass S. (2017). Choice Architecture. Moscow: Mann, Ivanov and Ferber, Ltd. 310 p. (In Russ.)
60. Ustinovičius L.M., Łoniewski K.M. (2013). Verbal decision analysis. Economics and Management, no. 2, pp. 96–103 (In Russ.)
61. Fedorov V.A., Makoveeva E.N. (2017). The method of analogies as a method of risk assessment. Collection of articles of the International Scientific and Practical Conference “Development of Science and Technology: the Mechanism of Choosing and Self-Priorities”, vol. 3, pp. 145–146. Ufa: Aeterna (In Russ.)
62. Feoktistov A.G., Korsukov A.S., Dyad’kin Yu.A. (2016). Instrumental means of simulation modeling of subject-oriented distributed computing systems. Systems of Control, Communication and Security, no. 4, pp. 30–60 (In Russ.)
63. Filippovich A.Yu. (2003). Integration of situational, simulation and expert modeling systems. Moscow: Elix+. 299 p. (In Russ.)
64. Chernov I.V. (2018). Improving the efficiency of managerial decisions based on the use of the analytical complex of scenario analysis and forecasting. RSUH/RGGU BULLETIN. Series Economics. Management. Law, no. 1 (11), pp. 40–57 (In Russ.)
65. Shvedin B.Ya. (2010). Ontology of the enterprise: Experience & Ontological approach. The technology for building an ontological model of an enterprise based on the analysis and structuring of live experience. Moscow: Lenand. 240 p. (In Russ.)
66. Shimshirt N.D. (2023). Simulation business modeling. Tomsk: Tomsk State University. 104 p. (In Russ.)
67. Firer A.V., Yakovleva E.N. et al. (2021). Elementary mathematics. Irrational equations and inequalities: Textbook. Krasnoyarsk: Siberian Federal University Publ. 114 p. (In Russ.)
68. Beg I., Khalid A. (2012). Aggregation of beliefs in the fuzzy environment. Journal of Fuzzy Mathematics, no. 4 (20), pp. 911–924.
Review
For citations:
Drogobytskiy I.N. System analysis in the sociocultural field: Features, structure, and model support. Economics of Contemporary Russia. 2025;28(4):36-51. (In Russ.) https://doi.org/10.33293/1609-1442-2025-28(4)-36-51. EDN: UBWIHW


























