INVESTIGATION OF THE SIBERIAN FEDERAL DISTRICT OF THE RUSSIAN FEDERATION SOCIO-ECONOMIC DEVELOPMENT LEVEL FOR 2018-2021 USING THE METHODS OF MULTIVARIATE DATA ANALYSIS

Author:

Yudintsev A. Yu.,Troshkina G. N.

Abstract

The paper analyzes the socio-economic development of the regions dynamics level of the Siberian Federal District of the Russian Federation for the period from 2018 to 2021. The basis of the study was the Federal State Statistics Service for monitoring the socio-economic situation in the regions of the Russian Federation. The following indicators are considered: average monthly nominal accrued wages of employees (rubles) per year, per capita monetary income of the population (rubles) on average per year, labor force (thousand people) on average per year, number of unemployed (thousand people) on average per year, the volume of investments in fixed assets (million rubles) per year, retail trade turnover (million rubles) per year, goods of own production were shipped, works and services performed on their own per year (excluding VAT, excises and similar mandatory payments) million rubles. The methodology used includes: bringing monetary indicators for the period under review to the prices of 2021 in accordance with the deflator indices of the gross domestic product of the Russian Federation; reduction of the original set of non-orthogonal variables using factor analysis to a small-sized orthogonal factor space; determination of the Russian Federation federal districts centroids by the center of mass method for each year of the period under review; analysis of the Siberian Federal District internal structure dynamics and its position.

Publisher

Altai State University

Subject

Ocean Engineering

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