Please use this identifier to cite or link to this item: http://repository.hneu.edu.ua/handle/123456789/22434
Title: Fuzzy Logic and Neural Networks Application in Estimation of Economic Security
Authors: Chagovets L. O.
Chernova N. L.
Panasenko O. V.
Medvicka I.
Keywords: economic security
uncertainty
input indicators
output indicators
fuzzy logic
fuzzy inference
neural networks
Issue Date: 2019
Citation: Сhagovets L. Fuzzy Logic and Neural Networks Application in Estimation of Economic Security / L. Chagovets, N. Chernova, O. Panasenko, I. Medvicka // Economic and Social-Focused Issues of Modern World : сonference Proceedings of the 2nd International Scientific Conference, October 16-17, 2019, Bratislava, Slovak Republic. – 2019. – Pp. 20–29.
Abstract: The paper presents the results of estimation of the level of economic security based on fuzzy logic and neural networks algorithms. The suggested model takes into account the fact of uncertainty of external and internal threats of enterprise economic security. The basis term set was determined as “absolute”, “satisfactory”, “unsatisfactory” and “critical”. The system of weights for initial indicators was estimated. The membership functions for each linguistic term from the initial term set were obtained. The proposed models make it possible to estimate the level of economic security, to analyze the current situation and to predict the future levels of economic security.
URI: http://repository.hneu.edu.ua/handle/123456789/22434
Appears in Collections:Статті (ЕКСА)



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