Modelling of the еconomic growth factors: The case of the Ural regions and the Russian Federation

D. Benz
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引用次数: 1

Abstract

Current pandemic-induced downturn has made the problem of economic growth even more acute for the Ural regions of Russia. The national economy is stagnating and trans mits the same processes to the regional economies. The paper aims to identify the economic growth factors for eight Ural regions and for the national economy as a whole. The author mod els the functions of economic growth for regions that are part of both the Ural Federal District and the Ural macroregion, thereby consciously expanding the study for comparative analysis. Methodologically, the paper relies on the theory of economic growth and theory of produc tion (works of C. W. Cobb, P. H. Douglas, R. M. Solow). The author uses econometric tools and builds regressions for eight regions and the national economy, where the outcome variable is the growth rate of gross regional product. The independent variables include the growth rates of the following indicators: industrial production, employment, investments in fixed assets, cost of fixed assets, average per capita incomes, costs of technological innovations. The source of statistical information is Rosstat data covering the period 1995–2018. Based on the constructed functions, the researcher draws a number of conclusions. For the majority of the Ural regions, as well as for the Russian economy, the deciding and the most elastic factor is the growth rate of industrial production. Results among regions vary, but in total, the growth rate of average per capita incomes is the second most important factor. The increase in employment affects greatly the economic growth, especially in those regions that have seen a drastic decline in the labour force over the past decades. The costs of technological innovation do not demonstrate high elasticity. The author suggests that the reason is that their amount is extremely small. Even high growth rates of costs of technological innovation do not produce a visible result, since their level remains catastrophically low. The results of the study can be used in the regional and national socioeconomic development strategies, as well as serve a basis for further economic studies.
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经济增长因素的建模:以乌拉尔地区和俄罗斯联邦为例
当前疫情引发的经济衰退使俄罗斯乌拉尔地区的经济增长问题更加严重。国民经济停滞不前,并将同样的过程转移到区域经济中。本文旨在确定乌拉尔八个地区和整个国民经济的经济增长因素。作者对同时属于乌拉尔联邦区和乌拉尔大区的地区的经济增长函数进行了建模,从而有意识地扩大了比较分析的研究范围。在方法论上,本文依赖于经济增长理论和生产理论(C.W.Cobb,P.H.Douglas,R.M.Solow的著作)。作者使用计量经济学工具,建立了八个地区和国民经济的回归,其中结果变量是地区生产总值的增长率。自变量包括以下指标的增长率:工业生产、就业、固定资产投资、固定资产成本、人均收入、技术创新成本。统计信息来源于1995年至2018年期间的Rosstat数据。基于构建的函数,研究者得出了一些结论。对于大多数乌拉尔地区以及俄罗斯经济来说,决定性和最具弹性的因素是工业生产的增长率。各地区的结果各不相同,但总的来说,人均收入的增长率是第二重要因素。就业的增加极大地影响了经济增长,特别是在那些劳动力在过去几十年中急剧下降的地区。技术创新的成本没有表现出很高的弹性。作者认为,原因是它们的数量非常少。即使是技术创新成本的高增长率也不会产生明显的结果,因为它们的水平仍然非常低。研究结果可用于区域和国家的社会经济发展战略,也可为进一步的经济研究奠定基础。
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发文量
27
审稿时长
16 weeks
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