Analysing the Data on Incomes in the Regional Context by the Principal Component Method

Authors

  • Baryy Galeevich Ilyasov Federal State Budgetary Educational Institution of Higher Education "Ufa State Aviation Technical University"
  • Elena Anatolyevna Makarova Federal State Budgetary Educational Institution of Higher Education "Ufa State Aviation Technical University"
  • Elena Shavkatovna Zakieva Federal State Budgetary Educational Institution of Higher Education "Ufa State Aviation Technical University" https://orcid.org/0000-0002-6921-7473
  • Emma Salavatovna Gizdatullina Federal State Budgetary Educational Institution of Higher Education "Ufa State Aviation Technical University"

DOI:

https://doi.org/10.17059/2019-2-22

Keywords:

population income, principal component method, sample, clustering, weight coefficient, coefficient of information content, integrated sign, scatterplot, clusters of regions, imitating dynamic model

Abstract

The article focuses on solving the task of analysing statistical data on households' income and their main components in absolute and relative units. We took into account a number of additional indicators, including social transfers, and applied the principle component method. The analysis' purpose was to identify patterns of «clustering». The first step was to identify clusters of the Russian Federation regions, which vary in terms of population's revenue structure taking into account the volumes of subsidies and subventions. The second step was to determine the generalized characteristics of the revealed clusters and their representation in a form of clustering rules. We have shown that the cluster structure of the households sector at the regional level is sufficiently polarized. We have revealed the small clusters of regions characterized by a high level of households' monetary income and relatively large population (e. g. Moscow, Khanty-Mansi Autonomous Okrug). Alternatively, there are sufficiently inhabited clusters of regions with both a considerable volume of non-monetary income in a form of food combined and the low or average level of monetary income and small positive dynamics of population (Bryansk, Kursk Oblasts). On the other hand, in the regions with a relatively low monetary income, the revenue structure includes a high share of natural supplies in the form of food (for example, Republic of Dagestan and Republic of Ingushetia). Moreover, in the regions with a high monetary income, there is a small share of the raised funds and spent savings in revenue structure (Yamalo-Nenets Autonomous Okrug and others). We have constructed clusters of regions and established their quantity, structure and generalized characteristics presented in the form of clustering rules. We used that data for defining structural and parametrical characteristics when developing a dynamic model of the households sector and the module of intellectual management. These dynamic model and the module became a part of the system of imitating dynamic modelling and intellectual management (SIDMIM) of population income generation. The application of SIDMIM involves scenario studies for decision-making in managing the population income at the regional level considering differentiation in the income level.

Author Biographies

Baryy Galeevich Ilyasov, Federal State Budgetary Educational Institution of Higher Education "Ufa State Aviation Technical University"

Doctor of Engineering, Professor, Department of Engineering Cybernetics, Ufa State Aviation Technical University; Scopus AuthorID: 6603426467 (12/6, K. Marksa st., Ufa, Bashkortostan, 450000, Russian Federation; e-mail: ilyasov@tc.ugatu.ac.ru).

Elena Anatolyevna Makarova, Federal State Budgetary Educational Institution of Higher Education "Ufa State Aviation Technical University"

Doctor of Engineering, Professor, Department of Engineering Cybernetics, Ufa State Aviation Technical University; Scopus Author ID: 57193092121 (12/6, K. Marksa st., Ufa, Bashkortostan, 450000, Russian Federation; e-mail: ea-makarova@mail.ru).

Elena Shavkatovna Zakieva, Federal State Budgetary Educational Institution of Higher Education "Ufa State Aviation Technical University"

PhD in Engineering , Associate Professor, Department of Engineering Cybernetics, Ufa State Aviation Technical University; https://orcid.org/0000-0002-6921-7473; Researcher ID: D-4447–2017; Scopus AuthorID: 57193094790 (12/6, K. Marksa st., Ufa, Bashkortostan, 450000, Russian Federation; e-mail: zakievae@mail.ru).

Emma Salavatovna Gizdatullina, Federal State Budgetary Educational Institution of Higher Education "Ufa State Aviation Technical University"

PhD Student, Ufa State Aviation Technical University (12/6, K. Marksa st., Ufa, Bashkortostan, 450000, Russian Federation; e-mail: gizdatullina@mail.ru).

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Published

28.06.2019

How to Cite

Ilyasov, B. G., Makarova, E. A., Zakieva, E. S., & Gizdatullina, E. S. (2019). Analysing the Data on Incomes in the Regional Context by the Principal Component Method. Economy of Regions, 15(2), 601–617. https://doi.org/10.17059/2019-2-22

Issue

Section

Research articles