Using Machine Learning Techniques to Increase the Effectiveness of Cybersecurity

Buhas, Vasyl and Ponomarenko, Ihor and Bugas, Valeriy and Ramskyi, Andrii and Sokolov, Volodymyr (2021) Using Machine Learning Techniques to Increase the Effectiveness of Cybersecurity Cybersecurity Providing in Information and Telecommunication Systems II 2021, 3188 (2). pp. 273-281. ISSN 1613-0073

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Abstract

In today's world, a great number of organizations generate and accumulate large amounts of information, which is of great value to owners, and is also considered by attackers as a valuable resource for enrichment. Any data storage system has vulnerabilities that will be exploited during cyberattacks. The inability to build a system secure enough against unauthorized access to data, forces companies to respond on an ongoing basis to evolving technologies of misappropriation of information by developing more effective methods of identifying and combating cyberattacks. This article examines the features of the use of machine learning methods to identify illegal access by third parties to the information of individuals and legal entities with economic and reputational damage. The study considers methods of processing various types of data (numerical values, textual information, video and audio content, images) that can be used to build an effective cybersecurity system. Obtaining a high level of identification of unauthorized access to data and combating their theft is possible through the implementation of modern machine learning approaches, which are constantly improving by creating innovative data processing algorithms and the use of powerful cloud computing services, acting as an element to counter rapidly evolving technologies.

Item Type: Article
Uncontrolled Keywords: Cybersecurity; machine learning; neural networks; image recognition; optimization;information; dataset
Subjects: Статті у наукометричних базах > Scopus
Divisions: Факультет інформаційних технологій та математики > Кафедра інформаційної та кібернетичної безпеки імені професора Володимира Бурячка
Depositing User: Павло Миколайович Складанний
Date Deposited: 13 Oct 2022 09:39
Last Modified: 13 Oct 2022 09:39
URI: https://elibrary.kubg.edu.ua/id/eprint/41953

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