Prediction of spatial effects and factors of regional development using machine learning methods
- Авторлар: Mikhailova S.S.1, Grineva N.V.1, Korablev Y.A.1, Bachaev U.A.1
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Мекемелер:
- Financial University under the Government of the Russian Federation
- Шығарылым: Том 12, № 3 (2025)
- Беттер: 23-30
- Бөлім: ARTIFICIAL INTELLIGENCE AND MACHINE LEARNING
- URL: https://bakhtiniada.ru/2313-223X/article/view/350181
- DOI: https://doi.org/10.33693/2313-223X-2025-12-3-23-30
- EDN: https://elibrary.ru/AORZVF
- ID: 350181
Дәйексөз келтіру
Аннотация
When modeling the spatial development of a territory, taking into account spatial effects, it is important to keep in mind that the current development of the territory is influenced not only by internal indicators (economic, social, demographic, infrastructural, etc.), but also by the processes taking place in neighboring areas. When modeling the spatial development of the Russian Federation, it is necessary to take into account spatial heterogeneity, long distances, transport corridors and climatic conditions. Accounting for these complex components includes modeling of inter-regional and intra-regional interaction. The aim of the study is to assess the impact of socio-economic factors on the gross regional product (GRP), taking into account the spatial relationship between the federal districts and time dynamics. To achieve the goal, the following tasks were solved in the work: 1) a comprehensive analysis of approaches to modeling the spatial development of regions has been carried out; 2) an adapted methodology of spatial analysis has been developed, including: a comprehensive system of indicators of socio-economic development that takes into account the specifics of Siberian regions, a typology of spatial econometric models. Materials and methods. The econometric spatial modeling apparatus was used in the modeling. Conclusions. Spatial econometric models provide a more accurate description of socio-economic processes in federal districts compared to traditional approaches that do not take into account the spatial structure of data.
Негізгі сөздер
Толық мәтін
##article.viewOnOriginalSite##Авторлар туралы
Svetlana Mikhailova
Financial University under the Government of the Russian Federation
Хат алмасуға жауапты Автор.
Email: ssmihajlova@fa.ru
ORCID iD: 0000-0001-9183-8519
Dr. Sci. (Econ.), Associate Professor, senior researcher, Institute of Digital Technologies, Faculty of Information Technology and Big Data Analysis
Ресей, MoscowNatalia Grineva
Financial University under the Government of the Russian Federation
Email: ngrineva@fa.ru
ORCID iD: 0000-0001-7647-5967
Cand. Sci. (Econ.), Associate Professor, associate professor, Department of Information Technology, researcher, Institute of Digital Technologies
Ресей, MoscowYuri Korablev
Financial University under the Government of the Russian Federation
Email: YuAKorablev@fa.ru
ORCID iD: 0000-0001-5752-4866
SPIN-код: 3594-3504
Cand. Sci. (Econ.), Associate Professor, researcher, Institute of Digital Technologies, associate professor, Department of Business Informatics, Faculty of Information Technology and Big Data Analysis
Ресей, MoscowUmar Bachaev
Financial University under the Government of the Russian Federation
Email: UABachaev@fa.ru
ORCID iD: 0000-0003-4109-8596
SPIN-код: 8029-6668
postgraduate student, intern-researcher, Institute of Digital Technologies
Ресей, MoscowӘдебиет тізімі
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