Evolutionary strategy as a method of improving the balanced scorecard of enterprise management

Authors

DOI:

https://doi.org/10.33987/vsed.1(65).2018.207-216

Keywords:

evolutionary strategy algorithm, balanced scorecard, genetic algorithm, evolutionary approach, heuristic method

Abstract

The article is devoted to the application of the method of evolutionary strategy for improving the enterprise management as a type of evolutionary algorithms, namely, the completion of a balanced scorecard by the algorithm of the evolutionary strategy, which will significantly increase the efficiency of strategic and operational decision- making in the enterprise management. Theoretical and applied developments are based on research on improving enterprises balanced scorecard. The innovative computer technology of the implementation of evolutionary strategy algorithm is developed. The results of the application of the evolution strategy algorithm at the enterprise (wagon-renovating plant) are presented. Based on the results of conducted calculations the analysis is made and the propositions for improving the enterprise management system.

Author Biographies

Myron Sendzuk, SHEE «Kyiv National Economic University named after Vadym Hetman»

PhD in Economics, Professor of Information Systems in Economics Department

Iryna Naumenko, SHEE «Kyiv National Economic University named after Vadym Hetman»

PhD in Economics, Senior Lecturer of Information Systems in Economics Department

Olena Derzhuk, SHEE «Kyiv National Economic University named after Vadym Hetman»

PhD in Economics, Senior Lecturer of Information Systems in Economics Department

References

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Published

2018-03-28

Issue

Section

Mathematical methods, models and information technologies in economics