Regions of Russia: Clustering Results Based on Economic and Innovation Indexes

IF 7.6 1区 经济学 Q1 ECONOMICS
V. Zavarukhin, T. Chinaeva, E. Churilova
{"title":"Regions of Russia: Clustering Results Based on Economic and Innovation Indexes","authors":"V. Zavarukhin, T. Chinaeva, E. Churilova","doi":"10.21686/2500-3925-2022-5-35-47","DOIUrl":null,"url":null,"abstract":"Currently, one of the main trends is the study of the features and benefits of regional development, increasing the importance of the role of regions in national and world politics. The differences in technological results that can be observed at the national and regional levels are largely due to the peculiarities of the institutional environment, i.e. the degree of concentration at the regional level of high-tech companies, modern production and innovation infrastructures. The regions of the Russian Federation demonstrate noticeable differences regarding the level of socio-economic development, the availability of human and natural resources, the development of educational, scientific and innovative potentials, depending on the historical development of infrastructure. This study examines the results of clustering Russian regions according to the main indexes characterizing the economic, scientific and innovative activity. The classification of regions was carried out by the method of cluster analysis.Purpose of the study. The aim of the study was to identify homogeneous groups of regions that are similar in their economic and innovation indexes, statistical analysis of these groups based on non-parametric methods and methods of correlation and regression analysis, the formation of conclusions and recommendations regarding innovation.Materials and methods. The information base of the study was statistical data and analytical information characterizing the state of economic and innovation activity in the Russian regions. The following statistical methods were used in the study: non-parametric (Spearman’s rank correlation coefficients, Mann-Whitney test), correlation (Pearson’s coefficients, coefficients of determination), regression (non-linear regression models), multivariate classifications (cluster analysis), descriptive statistics (averages, structural averages, indicators of variation, etc.).Results. As a result of clustering the regions of Russia using the k-means method, 4 cluster groups were obtained, which are statistically homogeneous within the studied indexes. In order to identify the relationships between the considered indexes, paired linear Pearson correlation coefficients were calculated. The study tested three hypotheses about statistically significant differences between the indexes of the third and fourth clusters. The set of indexes was as follows: the coefficient of inventive activity, internal costs of research and development per employee, the average per capita size of innovative goods and services. For these purposes, the nonparametric Mann-Whitney test was used. The analysis showed that the regions of the Russian Federation are extremely diverse and heterogeneous in terms of their economic and innovative development. When analyzing them, it is advisable to first use cluster analysis methods to obtain homogeneous groups of territories with similar social and economic characteristics, which is confirmed in this study by testing hypotheses about statistically significant differences between the indexes of the third and fourth clusters (differences between the first and second clusters with other clusters and between themselves obvious and do not require any mathematical proof).Conclusion. The leaders in scientific and innovative development are Moscow, St. Petersburg, the Moscow region and the Republic of Tatarstan. They have the highest rates of inventive activity of the population and the volume of production of innovative goods and services. Such regions of the Russian Federation as the Tyumen region, the Republic of Sakha (Yakutia), Magadan region, Sakhalin region and Chukotka formed a cluster group with the highest per capita GRP, investments and fixed assets, but they have almost the lowest rates of innovation activity. The extractive industry is the main engine of the economy of these regions. A separate cluster was formed by 26 regions with average levels of economic and innovative development in the Russian Federation. In particular, it includes the areas: Belgorod, Lipetsk, Smolensk, Arkhangelsk, Vologda, Leningrad, Murmansk, Chelyabinsk, Irkutsk, Tomsk, etc. These regions are promising in terms of innovation, but require significant federal investments for their further development. The fourth group of regions united economically weak territories with low rates of innovation activity. These regions accounted for more than half of the total (47 regions). Statistical analysis within the resulting clusters made it possible to identify the relationship between economic indexes and describe them using regression models.","PeriodicalId":48456,"journal":{"name":"Review of Economics and Statistics","volume":"4 1","pages":""},"PeriodicalIF":7.6000,"publicationDate":"2022-11-12","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Review of Economics and Statistics","FirstCategoryId":"96","ListUrlMain":"https://doi.org/10.21686/2500-3925-2022-5-35-47","RegionNum":1,"RegionCategory":"经济学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q1","JCRName":"ECONOMICS","Score":null,"Total":0}
引用次数: 0

Abstract

Currently, one of the main trends is the study of the features and benefits of regional development, increasing the importance of the role of regions in national and world politics. The differences in technological results that can be observed at the national and regional levels are largely due to the peculiarities of the institutional environment, i.e. the degree of concentration at the regional level of high-tech companies, modern production and innovation infrastructures. The regions of the Russian Federation demonstrate noticeable differences regarding the level of socio-economic development, the availability of human and natural resources, the development of educational, scientific and innovative potentials, depending on the historical development of infrastructure. This study examines the results of clustering Russian regions according to the main indexes characterizing the economic, scientific and innovative activity. The classification of regions was carried out by the method of cluster analysis.Purpose of the study. The aim of the study was to identify homogeneous groups of regions that are similar in their economic and innovation indexes, statistical analysis of these groups based on non-parametric methods and methods of correlation and regression analysis, the formation of conclusions and recommendations regarding innovation.Materials and methods. The information base of the study was statistical data and analytical information characterizing the state of economic and innovation activity in the Russian regions. The following statistical methods were used in the study: non-parametric (Spearman’s rank correlation coefficients, Mann-Whitney test), correlation (Pearson’s coefficients, coefficients of determination), regression (non-linear regression models), multivariate classifications (cluster analysis), descriptive statistics (averages, structural averages, indicators of variation, etc.).Results. As a result of clustering the regions of Russia using the k-means method, 4 cluster groups were obtained, which are statistically homogeneous within the studied indexes. In order to identify the relationships between the considered indexes, paired linear Pearson correlation coefficients were calculated. The study tested three hypotheses about statistically significant differences between the indexes of the third and fourth clusters. The set of indexes was as follows: the coefficient of inventive activity, internal costs of research and development per employee, the average per capita size of innovative goods and services. For these purposes, the nonparametric Mann-Whitney test was used. The analysis showed that the regions of the Russian Federation are extremely diverse and heterogeneous in terms of their economic and innovative development. When analyzing them, it is advisable to first use cluster analysis methods to obtain homogeneous groups of territories with similar social and economic characteristics, which is confirmed in this study by testing hypotheses about statistically significant differences between the indexes of the third and fourth clusters (differences between the first and second clusters with other clusters and between themselves obvious and do not require any mathematical proof).Conclusion. The leaders in scientific and innovative development are Moscow, St. Petersburg, the Moscow region and the Republic of Tatarstan. They have the highest rates of inventive activity of the population and the volume of production of innovative goods and services. Such regions of the Russian Federation as the Tyumen region, the Republic of Sakha (Yakutia), Magadan region, Sakhalin region and Chukotka formed a cluster group with the highest per capita GRP, investments and fixed assets, but they have almost the lowest rates of innovation activity. The extractive industry is the main engine of the economy of these regions. A separate cluster was formed by 26 regions with average levels of economic and innovative development in the Russian Federation. In particular, it includes the areas: Belgorod, Lipetsk, Smolensk, Arkhangelsk, Vologda, Leningrad, Murmansk, Chelyabinsk, Irkutsk, Tomsk, etc. These regions are promising in terms of innovation, but require significant federal investments for their further development. The fourth group of regions united economically weak territories with low rates of innovation activity. These regions accounted for more than half of the total (47 regions). Statistical analysis within the resulting clusters made it possible to identify the relationship between economic indexes and describe them using regression models.
俄罗斯地区:基于经济和创新指数的聚类结果
当前的主要趋势之一是研究区域发展的特点和效益,提高区域在国家和世界政治中的作用的重要性。在国家和区域两级可以观察到的技术结果的差异主要是由于体制环境的特殊性,即高科技公司、现代生产和创新基础设施在区域一级的集中程度。根据基础设施的历史发展情况,俄罗斯联邦各地区在社会经济发展水平、人力资源和自然资源的可用性、教育、科学和创新潜力的发展方面表现出明显的差异。本研究根据表征经济、科技和创新活动的主要指标,对俄罗斯地区集群化的结果进行了检验。采用聚类分析方法对区域进行分类。研究目的:本研究的目的是找出经济和创新指标相似的区域同质群体,并基于非参数方法和相关回归分析方法对这些群体进行统计分析,形成关于创新的结论和建议。材料和方法。这项研究的资料基础是描述俄罗斯各地区经济和创新活动状况的统计数据和分析资料。本研究采用以下统计方法:非参数(Spearman’s秩相关系数、Mann-Whitney检验)、相关(Pearson’s系数、决定系数)、回归(非线性回归模型)、多元分类(聚类分析)、描述性统计(平均值、结构平均值、变异指标等)。采用k-means方法对俄罗斯各地区进行聚类,得到4个聚类组,这些聚类组在研究指标内具有统计同质性。为了确定所考虑的指标之间的关系,计算成对线性Pearson相关系数。本研究检验了关于第三类和第四类指标在统计上有显著差异的三个假设。这组指标为:发明活动系数、每个员工的内部研发成本、人均创新产品和服务的平均规模。出于这些目的,使用了非参数曼-惠特尼检验。分析表明,俄罗斯联邦各地区在经济和创新发展方面极为多样化和异质化。在对其进行分析时,建议首先使用聚类分析方法获得具有相似社会经济特征的地区同质群体,本研究通过检验第三和第四聚类指标之间存在统计学显著差异的假设(第一和第二聚类与其他聚类之间以及它们之间的差异明显,不需要任何数学证明)来证实这一点。科学和创新发展的领导者是莫斯科、圣彼得堡、莫斯科地区和鞑靼斯坦共和国。他们拥有最高的人口发明活动率和创新产品和服务的生产量。俄罗斯联邦的秋明地区、萨哈共和国(雅库特)、马加丹地区、库页岛地区和楚科奇等地区形成了人均国内生产总值、投资和固定资产最高的集群,但它们的创新活动率几乎最低。采掘业是这些地区经济的主要引擎。俄罗斯联邦经济和创新发展水平平均的26个地区组成了一个单独的集群。特别是,它包括以下地区:别尔哥罗德、利佩茨克、斯摩棱斯克、阿尔汉格尔斯克、沃洛格达、列宁格勒、摩尔曼斯克、车里雅宾斯克、伊尔库茨克、托木斯克等。这些地区在创新方面很有希望,但需要大量的联邦投资才能进一步发展。第四组地区是经济薄弱、创新活动率低的地区。这些地区占总数的一半以上(47个地区)。通过对所得聚类进行统计分析,可以确定经济指标之间的关系,并使用回归模型对其进行描述。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
求助全文
约1分钟内获得全文 求助全文
来源期刊
CiteScore
8.50
自引率
0.00%
发文量
175
期刊介绍: The Review of Economics and Statistics is a 100-year-old general journal of applied (especially quantitative) economics. Edited at the Harvard Kennedy School, the Review has published some of the most important articles in empirical economics.
×
引用
GB/T 7714-2015
复制
MLA
复制
APA
复制
导出至
BibTeX EndNote RefMan NoteFirst NoteExpress
×
提示
您的信息不完整,为了账户安全,请先补充。
现在去补充
×
提示
您因"违规操作"
具体请查看互助需知
我知道了
×
提示
确定
请完成安全验证×
copy
已复制链接
快去分享给好友吧!
我知道了
右上角分享
点击右上角分享
0
联系我们:info@booksci.cn Book学术提供免费学术资源搜索服务,方便国内外学者检索中英文文献。致力于提供最便捷和优质的服务体验。 Copyright © 2023 布克学术 All rights reserved.
京ICP备2023020795号-1
ghs 京公网安备 11010802042870号
Book学术文献互助
Book学术文献互助群
群 号:481959085
Book学术官方微信