Forecasting the sectoral structure of population employment

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All the labor market subjects that can influence the labor resources dynamics are interested in employment forecasts by labor market sectors. Such subjects are state employees and municipal employees, employers and workers. The statistical data aggregation degree affects the quality of the labor resources dynamics forecasting. Each labor market indicator combines a set of detailed indicators in a high degree of aggregation case. When building the trends it is impossibile to take into account information on the detailed indicators trends. The labor market indicators for each specific year don’t contain information about the interaction with each other. This fact also negatively affects the forecast quality. The article discusses the use of a balance mathematical model of the labor resources dynamics, which relates the labor market sectoral indicators, to define the intersectoral movements indicators. The authors consider a calculating labor market indicators method that uses only statistical data on sectoral employment and unemployment. Thus, the statistical data on the labor resources dynamics provided by the Federal State Statistics Service is a sufficient condition for the Russian Federation labor market detailing using intersectoral movements’ indicators. The paper shows how a set of intersectoral movements indicators allows building the forecast values of these indicators and using them to calculate the forecast values of labor market indicators. The article considers examples of building employment estimates by Russian Federation economy sectors for 2011–2016 and 2019. The entry into force of the All-Russian classifier of types of economic activity second edition in 2017 is the reason for choosing such research intervals. The purpose of these examples was to determine the impact of the detailed labor market indicators of the sectoral employment estimates reliability. The authors compared the forecast obtained directly from labor market indicators with the forecasts obtained from intersectoral movements indicators. Intersectoral movements indicators are the results of applying balance models with varying degrees of detail. The reliability tables presented in this work to assess the forecasting quality indicate that the detailing of the sectoral employment indicators by using the balance model can increase reliability of the forecast.

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Sobre autores

Michael Drobotenko

Kuban State University

Email: emm@cemi.rssi.ru
Rússia, Krasnodar

Artyom Nevecherya

Kuban State University

Autor responsável pela correspondência
Email: emm@cemi.rssi.ru
ORCID ID: 0000-0001-6736-4691
Rússia

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