Template-type: ReDIF-Article 1.0
Author-Name: Yury A. Pleskachyev
Author-Workplace-Name: Russian Presidential Academy of National Economy and Public Administration
Author-Name: Yury Yu. Ponomarev
Author-Workplace-Name: Russian Presidential Academy of National Economy and Public Administration
Author-Name: Matvey A. Saprykin
Author-Workplace-Name: Russian Presidential Academy of National Economy and Public Administration
Title: Territorial Planning and Forecasting of Economic Indicators by Machine Learning Methods
Title: Территориальное планирование и прогнозирование экономических показателей методами машинного обучения 
Abstract: Forehanded consideration of economic development forecasts for both macroeconomic and microeconomic situation in the region and the metropolis is an important element in territorial planning and urban development in modern conditions. The article proposes an approach to forecasting economic indicators, which would allow simultaneously taking into account the dynamics of macroeconomic factors and the effects of individual program and strategic documents implementation (using the measures of national projects as an example). Using several options of modern model architectures, we show the most effective model in terms of forecast accuracy based on their approbation on two important indicators for the sphere of territorial planning – investments in fixed assets and real disposable incomes of the population.
The article was prepared as part of the research work of the state task of the RANEPA.
Keywords: forecasting, planning, machine learning
Classification-JEL: C40, C45, R53, E22, D31
Journal: Russian Economic Developments
Year: 2023
Issue: 9
Month: September
Pages: 46-57
File-URL: http://www.iep.ru/files/RePEc/gai/recdev/r2375.pdf
File-Format: Application/pdf
Handle: RePEc:gai:recdev:r2375