Scenario forecasting of the socio-economic consequences of the COVID-19 pandemic in Russian regions

Q3 Economics, Econometrics and Finance
I. Naumov, S. Krasnykh, Y. Otmakhova
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引用次数: 0

Abstract

Relevance. There is a perceived lack of methods that can accurately, reliably and comprehensively reflect the epidemiological situation in regions and its impact on their socio-economic development. The approaches that are currently described in research literature do not take into account the multivariance of scenarios of the COVID-19 pandemic, both in time and space. Research objective. The article aims to present a methodological framework that could be used to predict the socio-economic consequences of the COVID-19 pandemic in regions and to detect the most vulnerable regions. Data and methods. The study relies on a set of methods, including the methods of regression modeling, ARIMA forecasting and spatial correlation analysis. Results. The panel regression analysis has confirmed the negative impact of the pandemic on socio-economic development, in particular, the growth of overdue wage arrears, unemployment, arrears, the number of liquidated organizations, and the industrial production index. We have also identified the most vulnerable regions that need to be prioritized for government support. Conclusions. The resulting models and scenarios can be used by policy-makers to set the priorities of state policy for the economic support of the regions and stabilization of the epidemiological situation in the country.
2019冠状病毒病大流行对俄罗斯地区社会经济后果的情景预测
的相关性。人们认为缺乏能够准确、可靠和全面反映各区域流行病学情况及其对其社会经济发展的影响的方法。目前研究文献中描述的方法没有考虑到COVID-19大流行在时间和空间上的多种情况。研究目标。本文旨在提出一个方法框架,可用于预测2019冠状病毒病大流行在各地区的社会经济后果,并发现最脆弱的地区。数据和方法。本研究采用了回归建模、ARIMA预测和空间相关分析等方法。结果。小组回归分析证实了这一流行病对社会经济发展的不利影响,特别是拖欠工资、失业、拖欠工资、被清算组织数目和工业生产指数的增加。我们还确定了需要优先得到政府支持的最脆弱地区。结论。由此产生的模型和情景可供决策者用于确定国家政策的优先事项,以支持各地区的经济并稳定该国的流行病学形势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
REconomy
REconomy Economics, Econometrics and Finance-General Economics, Econometrics and Finance
CiteScore
1.60
自引率
0.00%
发文量
8
审稿时长
14 weeks
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