Problems of Modern Transformation of Statistics
https://doi.org/10.26794/2408-9303-2021-8-4-18-33
Abstract
The article is devoted to the problems of statistics transformation due to the appearance of new types of statistical observation which allows accumulating, processing and transfering big volumes of information at high speed. The modern stage of improvement in statistics is connected with the development of information technologies, the effectiveness of which determines the way many technological and methodological problems are solved. Their solution is based on the understanding that statistics is only able to perform its function by reflecting manageable economic phenomena and processes combining systemic, process, structural and functional approaches. The article describes the solution of the problem on the example of labor productivity in the production structure along with working out a system of indicators and using it in the analysis of the management system under consideration. Statistics currently is developing under the influence of digital and Bid Data technologies improvement. Being Internet technologies they are connected with the applications targeting at the formation of market of standardized services which can be used jointly by multiple consumers. This limits the possibility of using them in the basic information statistical processes, the function of which is to support making managerial decisions about particular unique management subjects that are developing under particular unique conditions. But at the same time disruptive digital technologies turn in the factor of the development of statistics as an activity primarily being implemented on the information platforms belonging to the management institutions. The research uses the methods of system and comparative analysis to consolidate modern concepts of economic system management, directions of development in statistics, development of digital technologies and their introduction in statistical processes.
About the Authors
O. E. MikhnenkoRussian Federation
Oleg E. Mikhnenko — Dr. Sci. (Econ.), Professor, Department of Digital Economy Information Systems
Moscow
V. N. Salin
Russian Federation
Victor N. Salin — Cand. Sci. (Econ.), Professor, Professor of the Department of Business Analytics
Moscow
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Review
For citations:
Mikhnenko O.E., Salin V.N. Problems of Modern Transformation of Statistics. Accounting. Analysis. Auditing. 2021;8(4):18-33. (In Russ.) https://doi.org/10.26794/2408-9303-2021-8-4-18-33