Публікації КНЕУ імені Вадима Гетьмана
Publications of KNEU named after Vadym Hetman
Шукати
Neuro-Fuzzy Modeling Techniques in Economics
ISSN 2415-3516
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Main page
About the Journal
Open Access Policy
Publication Ethics
Editorial Board
Bibliographic databases
For Authors
Requirements For The Papers
The Procedure Of Reviewing
Copyright And Permissions
License Agreement
Archive
Issue # 12 / 2023
Issue # 11 / 2022
Issue # 10 / 2021
Issue # 9 / 2020
Issue # 8 / 2019
All Issues
Contacts
Main page
Archive of Issues
# 5 / 2016
Issue contents # 5 / 2016
Зміст випуску № 5 / 2016
# 5 / 2016
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# 4/2015
# 5 / 2016
# 6/2017
Contents
Halyna Velykoivanenko
Vladislav Korchynskyi
Vika Chernyshova
Study of the neural networks overfitting effect on the example of the problem of application scoring
3 - 23
Tetyana Kasyanchuk
Modelling of optimal investment portfolio of diversified business-group under uncertainty
24 - 59
Yurii Kolyada
Volodymyr Bondar
Binning in neural network scoring models
60 - 80
Kateryna Kononova
Anton Dek
Financial time series forecasting: semantic analysis of economic news
81 - 92
Olha Lukianenko
Ihor Miroshnychenko
Complex of evaluation models of investment potential of the country
93 - 122
Svitlana Savina
Vladyslav Ben’
Selection of neural network architecture for solving problem of borrowers-individuals trustability classification
123 - 151
Vladimir Soloviev
Anna Tuliakova
Graphodynamical research methods for complexity of modern stock markets
152 - 179
Inna Strelchenko
Modeling of crisis transboundary contagion based on a set of neural networks
180 - 198
Oleksandr Chernyak
Dmytro Sikorskyi
Fuzzy approach to information risks’ measurement in CRM-systems
199 - 232