USE OF MACHINE LEARNING METHODS IN FORECASTING INDICATORS OF FISCAL AND MONETARY POLICY COORDINATION FOR THE ECONOMY OF UZBEKISTAN

Authors

  • Hakimov Hakimjon Researcher of Tashkent State University of Economics, 49 Islam Karimov Avenue, Tashkent, 100066, Uzbekistan.

Keywords:

Macroeconomic indicators, ARMA, RMSE, LASSO, economic activity, random forest.

Abstract

This paper proposes a new type of solution for Uzbekistan economy using several machine learning methods: LASSO, Ridge, Random Forest, Gradient Boosting and Artificial Neural Networks. This paper is one of the first attempts to apply machine learning methods to the macroeconomic forecasting in Uzbekistan. The main result of this paper is the confirmation of the possibility of more accurate forecasting of economic indicators in Uzbekistan using machine learning methods.

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Published

2024-01-06

Issue

Section

Articles

How to Cite

USE OF MACHINE LEARNING METHODS IN FORECASTING INDICATORS OF FISCAL AND MONETARY POLICY COORDINATION FOR THE ECONOMY OF UZBEKISTAN. (2024). American Journal of Business Management, Economics and Banking, 20, 36-44. https://americanjournal.org/index.php/ajbmeb/article/view/1717