Построение надёжной системы обнаружения вредоносного ПО с использованием генеративных состязательных сетей для увеличения данных
- Авторы: Багиров Э.1
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Учреждения:
- Институт Информационных Технологий
- Выпуск: Том 15, № 4 (2024)
- Страницы: 97-110
- Раздел: Статьи
- URL: https://journal-vniispk.ru/2079-3316/article/view/299214
- DOI: https://doi.org/10.25209/2079-3316-2024-15-4-97-110
- ID: 299214
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Список литературы
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