Please use this identifier to cite or link to this item: http://e.ieu.edu.ua/handle/123456789/1054
Title: METHODOLOGY OF THE COUNTRIES’ ECONOMIC DEVELOPMENT DATA ANALYSIS
Authors: DONETS, V.V.
STRILETS, V.Y.
UGRYUMOV, M.L.
SHEVCHENKO, D.O.
PROKOPOVYCH, S.V.
CHAGOVETS, L.O.
Keywords: machine learning, digital development, fuzzy clustering, radial basis neural networks, logistic regression, analysis of variables informativeness.
Issue Date: 4-Feb-2023
Citation: V.V. DONETS, V.Y. STRILETS, M.L. UGRYUMOV, D.O. SHEVCHENKO, S.V. PROKOPOVYCH, L.O. CHAGOVETS. 2023. METHODOLOGY OF THE COUNTRIES’ ECONOMIC DEVELOPMENT DATA ANALYSIS. 21-36. DOI: 10.20535/SRIT.2308-8893.2023.4.02
Abstract: The paper examines the issue of improving the methods of identification of economic objects and their analysis using algorithms of intelligent data process- ing. The use of the developed methodology in the economic analysis allows for improvement in the quality of management. It can be the basis for creating decision support systems to prevent potentially dangerous changes in the economic status of the research object. In this work, an improved method of c-means data clustering with agent-oriented modification is proposed, and a radial-basis neural network and its extension are proposed to determine whether the obtained clusters are relevant and to analyze the informativeness of state variables and obtain a subset of informa- tive variables. The effect of applying data compression using an autoencoder on the accuracy of the methods is also considered. According to the results of testing of the developed methodology, it was proved that the probability of incorrect determina- tion of the state was reduced when identifying the states of economic systems, and a reduced value of the error of the third kind was obtained when classifying the states of objects.
URI: http://e.ieu.edu.ua/handle/123456789/1054
Appears in Collections:Кафедра інформаційних технологій

Files in This Item:
File Description SizeFormat 
297208-Article Text-685937-1-10-20240122.pdf428.13 kBAdobe PDFView/Open


Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.