Abstract:
The prospects for doing business in countries are also determined by the business confidence
index. The purpose of the article is to model trends in indicators that determine the state of
the business climate of countries, in particular, the period of influence of the consequences of
COVID-19 is of scientific interest. The approach is based on the preliminary results of
substantiating a set of indicators and applying the taxonomy method to substantiate an
alternative indicator of the business climate, the advantage of which is its advanced nature.
The most significant factors influencing the business climate index were identified, in
particular, the annual GDP growth rate and the volume of retail sales. The similarity of the
trends in the calculated and actual business climate index was obtained, the forecast values
were calculated with an accuracy of 89.38%. And also, the obtained modeling results were
developed by means of building and using neural networks with learning capabilities, which
makes it possible to improve the quality and accuracy of the business climate index forecast
up to 96.22%. It has been established that the consequences of the impact of COVID-19 are
forecasting a decrease in the level of the country's business climate index in the 3rd quarter of
2020. The proposed approach to modeling the country's business climate is unified, easily
applied to the macroeconomic data of various countries, demonstrates a high level of
accuracy and quality of forecasting. The prospects for further research are modeling the
business climate of the countries of the world in order to compare trends and levels, as well
as their changes under the influence of quarantine restrictions.
Description:
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