Please use this identifier to cite or link to this item: https://dspace.mnau.edu.ua/jspui/handle/123456789/26202
Title: Algorithm for assessing national financial and economic security
Authors: Атаманюк, Ігор Петрович
Atamanyuk, Igor
Кондратенко, Юрій Пантелійович
Trofymenko, Ya.
Sidenko, Ie.
Chumachenko, D.
Полторак, Анастасія Сергіївна
Poltorak, Anastasiya
Kondratenko, Yuriу
Keywords: artificial intelligence
neural networks
x-ray images
classification problem
hyperparameters
model training
medical diagnostics
Issue Date: 2026
Citation: Atamanyuk, I., Kondratenko, Y., Trofymenko, Ya., Sidenko, I., Chumachenko, A. & Poltorak, A. (2026, May 27–29). Algorithm for assessing national financial and economic security [Conference abstract]. 24th Annual Industrial Simulation Conference – ISC’2026, San Sebastián, Spain. University of the Basque Country.
Abstract: In modern medicine, automated processing and analysis of medical images is a very relevant task, as it allows to increase the accuracy of diagnostics, reduce data processing time and reduce the burden on medical personnel. This paper investigates the use of neural networks to automate the process of classifying respiratory diseases based on X-ray images. The main focus is on the development and optimization of the architecture of convolutional neural networks (CNN), which allow detecting signs of diseases with high accuracy. It is expected that the proposed system will help medical professionals in quickly and accurately detecting diseases, which will contribute to reducing mortality. In addition, the paper investigates the impact of changing the values of hyperparameters on the quality of using the MobileNetV2 neural network, pre-trained on a large ImageNet dataset, to solve the problem of multi-class classification of medical images. The use of a pre-trained model allows for the effective use of the obtained universal features and significantly accelerates the learning process on specific medical data
URI: https://dspace.mnau.edu.ua/jspui/handle/123456789/26202
Appears in Collections:Тези конференцій (Факультет менеджменту)
Тези конференцій (Інженерно-енергетичний факультет)

Files in This Item:
File Description SizeFormat 
Стаття 1.pdf2,17 MBAdobe PDFView/Open


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