State debt assessment and forecasting: time series analysis

Author:

Zhuravka Fedir1ORCID,Filatova Hanna2ORCID,Šuleř Petr3ORCID,Wołowiec Tomasz4ORCID

Affiliation:

1. Doctor of Economics, Professor, Department of the International Economic Relations, Sumy State University

2. Ph.D. Student, Department of the International Economic Relations, Sumy State University

3. Ph.D., School of Expertness and Valuation, Institute of Technology and Business in Ceske Budejovice

4. Dr., Hab,. Associate Professor, Department of Administration and Social Sciences, University of Economics and Innovation in Lublin (WSEI)

Abstract

One of the pressing problems in the modern development of the world financial system is an excessive increase in state debt, which has many negative consequences for the financial system of any country. At the same time, special attention should be paid to developing an effective state debt management system based on its forecast values. The paper is aimed at determining the level of persistence and forecasting future values of state debt in the short term using time series analysis, i.e., an ARIMA model. The study covers the time series of Ukraine’s state debt data for the period from December 2004 to November 2020. A visual analysis of the dynamics of state debt led to the conclusion about the unstable debt situation in Ukraine and a significant increase in debt over the past six years. Using the Hurst exponent, the paper provides the calculated value of the level of persistence in time series data. Based on the obtained indicator, a conclusion was made on the confirmation of expediency to use autoregressive models for predicting future dynamics of Ukraine’s state debt. Using the EViews software, the procedure for forecasting Ukraine’s state debt by utilizing the ARIMA model was illustrated, i.e., the series was tested for stationarity, the time series of monthly state debt data were converted to stationary, the model parameters were determined and, as a result, the most optimal specification of the ARIMA model was selected.

Publisher

LLC CPC Business Perspectives

Subject

Strategy and Management,Economics and Econometrics,Finance,Business and International Management

Reference29 articles.

1. Bogdan, T. P. (2013) Derzhavnyi borh Ukrainy: osoblyvosti formuvannia ta upravlinnia v suchasnykh umovakh [State debt of Ukraine: features of formation and management in modern conditions]. Finansy Ukrainy – Finance of Ukraine, 1, 32-46. - http://www.irbis-nbuv.gov.ua/cgi-bin/irbis_nbuv/cgiirbis_64.exe?I21DBN=LINK&P21DBN=UJRN&Z21ID=&S21REF=10&S21CNR=20&S21STN=1&S21FMT=ASP_meta&C21COM=S&2_S21P03=FILA=&2_S21STR=Fu_2013_1_5

2. Box, G., Jenkins, G. M., & Reinsel G. (1994). Time Series Analysis: Forecasting & Control (3rd ed.) (614 p.). Prentice Hall.

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