Systematic approach to analyzing the impact of monetary processes in the economy on GDP

Authors

DOI:

https://doi.org/10.15587/1729-4061.2024.306446

Keywords:

monetary processes, GDP, depth of credit information, money supply, domestic credit

Abstract

The object of the study is monetary processes and the real sector of the economy. The purpose of the study is to analyze the impact of monetary processes in the economy on GDP based on a systematic approach. The task of analyzing the relationship between the main indicators of monetary processes and GDP on the basis of a wide sample of countries was solved. The results are obtained:

– for the variables included in the cluster analysis, the money supply analyzed: (1st cluster “stable financial environment” – 0, 2nd cluster “high access to credit” – 147.7, 3rd cluster “limited access to credit” – 72.2, 4th cluster “high interest rates” – 30.4 % of GDP);

– 72 countries are divided into 4 clusters, with 13 countries in the first cluster, 15 in the second, 21 in the third, and 23 in the fourth. This allows to determine the nature and place of the economy in the world and to make monetary policy decisions;

– there is a positive correlation between GDP and money supply (r=0.317); there is a weak positive relationship between GDP and the credit information depth index (r=0.203); there is a moderate positive relationship between GDP and domestic lending (r=0.39). Money supply management and domestic credit should be prioritized in monetary management of the economy.

The obtained results are explained by the assumption of linear dependence between the indicators of monetary processes and the real sector of the economy. This assumption was confirmed on the example of different countries, which indicates its universality.

The peculiarities of the results obtained are the application of a combination of cluster and correlation and regression methods of analysis using actual World Bank data

Author Biographies

Gumar Anuarbekkyzy, Caspian University

Candidate of Economic Sciences, Associate Professor High School of Economic and Management

Gaukhar Zhanibekova, Kainar Academy

PhD Doctor, Associate Professor

School of Business and Management

Munira Imramziyeva, Caspian University

PhD Doctor, Associate Professor

High School of Economic and Management

Togzhan Zholdasbayeva

Candidate of Economic Sciences, Associate Professor

High School of Economic and Management

Bessekey Yerkin, Abylai Khan Kazakh University of International Relations and World Languages

PhD Doctor, Associate Professor

Zhaxat Kenzhin, Academy of Physical Education and Mass Sport

PhD Doctor, Associate Professor

Department of Social Humanities

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Systematic approach to analyzing the impact of monetary processes in the economy on GDP

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Published

2024-06-28

How to Cite

Anuarbekkyzy, G., Zhanibekova, G., Imramziyeva, M., Zholdasbayeva, T., Yerkin, B., & Kenzhin, Z. (2024). Systematic approach to analyzing the impact of monetary processes in the economy on GDP. Eastern-European Journal of Enterprise Technologies, 3(13 (129), 79–90. https://doi.org/10.15587/1729-4061.2024.306446

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Transfer of technologies: industry, energy, nanotechnology