{"title":"Methods of Sustainable Clustering of Russian Regions by Employment","authors":"I. Gavrilenko","doi":"10.21686/2073-1051-2022-3-160-177","DOIUrl":null,"url":null,"abstract":"The problem of the imbalance in the labor market of the Russian Federation cannot be solved without leveling the heterogeneity of its regions by socio-economic and demographic characteristics, since the labor market is a dynamic complex system that is influenced by a variety of factors, such as the economic, demographic situation, quality of education, interests of market participants, technological progress and digitalization, psychological aspects, etc. The article discusses the application of cluster and discriminant analysis methods on socio-economic data, highlights the regional features of the labor market in Russia. Cluster analysis was carried out using traditional hierarchical and iterative methods: the “Nearest Neighbor” method, the “Far Neighbor” method, the “Ward” method and the k-means method, as well as the fanny fuzzy clustering method. The results obtained by these five methods were evaluated for consistency. The conducted discriminant analysis allowed us to obtain a stable cluster structure in terms of the number of employed people by type of economic activity, dividing the regions of Russia into four main groups characterized by positive, average, neutral and negative behavior. Thanks to the construction of profiles of the obtained clusters, poorly informative types of economic activity were identified, employment in which has little effect on the division of regions into groups. The article evaluates the errors of cluster analysis methods for the final stable clustering. The regions with high and low levels of employment are analyzed, atypical subjects of the Russian Federation are identified and their industry specialization is considered. A comparative analysis of the formed groups and atypical regions was carried out, regions that can be conditionally assigned to any cluster were identified. The final typologization of the regions of Russia by the number of employed by type of economic activity has been developed taking into account territorial, social, sectoral and climatic features.","PeriodicalId":30952,"journal":{"name":"Perspectives on Federalism","volume":null,"pages":null},"PeriodicalIF":0.0000,"publicationDate":"2022-10-17","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"1","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Perspectives on Federalism","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.21686/2073-1051-2022-3-160-177","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q4","JCRName":"Social Sciences","Score":null,"Total":0}
引用次数: 1
Abstract
The problem of the imbalance in the labor market of the Russian Federation cannot be solved without leveling the heterogeneity of its regions by socio-economic and demographic characteristics, since the labor market is a dynamic complex system that is influenced by a variety of factors, such as the economic, demographic situation, quality of education, interests of market participants, technological progress and digitalization, psychological aspects, etc. The article discusses the application of cluster and discriminant analysis methods on socio-economic data, highlights the regional features of the labor market in Russia. Cluster analysis was carried out using traditional hierarchical and iterative methods: the “Nearest Neighbor” method, the “Far Neighbor” method, the “Ward” method and the k-means method, as well as the fanny fuzzy clustering method. The results obtained by these five methods were evaluated for consistency. The conducted discriminant analysis allowed us to obtain a stable cluster structure in terms of the number of employed people by type of economic activity, dividing the regions of Russia into four main groups characterized by positive, average, neutral and negative behavior. Thanks to the construction of profiles of the obtained clusters, poorly informative types of economic activity were identified, employment in which has little effect on the division of regions into groups. The article evaluates the errors of cluster analysis methods for the final stable clustering. The regions with high and low levels of employment are analyzed, atypical subjects of the Russian Federation are identified and their industry specialization is considered. A comparative analysis of the formed groups and atypical regions was carried out, regions that can be conditionally assigned to any cluster were identified. The final typologization of the regions of Russia by the number of employed by type of economic activity has been developed taking into account territorial, social, sectoral and climatic features.
期刊介绍:
Perspectives on Federalism is an Open Access peer-reviewed journal, promoted by the Centre for Studies on Federalism. This initiative follows the Bibliographical Bulletin on Federalism’s success, with an average of 15000 individual visits a month. Perspectives on Federalism aims at becoming a leading journal on the subject, and an open forum for interdisciplinary debate about federalism at all levels of government: sub-national, national, and supra-national at both regional and global levels. Perspectives on Federalism is divided into three sections. Along with essays and review articles, which are common to all academic journal, it will also publish very short notes to provide information and updated comments about political, economic and legal issues in federal states, regional organizations, and international organizations at global level, whenever they are relevant to scholars of federalism. We hope scholars from around the world will contribute to this initiative, and we have provided a simple and immediate way to submit an essay, a review article or a note. Perspectives on Federalism will publish original contributions from different disciplinary viewpoints as the subject of federalism requires. Papers submitted will undergo a process of double blind review before eventually being accepted for publication.