METHOD FOR DETERMINING EFFECTIVE TYPES OF NEURAL NETWORK MODELS FOR RECOGNITION OF CYBER ATTACKS BASED ON PROCEDURAL RULES
Bapiyev I. Khamzina A. Kassymova A. Khazhgaliyeva G. Ramazanova V. Bagisov Zh.
15 May 2022Little Lion Scientific
Journal of Theoretical and Applied Information Technology
2022#100Issue 92906 - 2914 pp.
The article touches upon the ways of developing neural network systems for recognizing cyber attacks on network resources of information systems. It is shown that a promising way of such development is the elaboration of rules for determining the effective types of neural network models. The expediency of determining effective types of neural network models based on the consistent application of three rules is substantiated. The first rule allows you to determine the set of valid models from the set of available types of neural network models. The definition of admissibility is implemented on the basis of comparing the minimum possible training time of the type of neural network model with the maximum admissible training time. The second and third rules, formed on the basis of a multi-criteria approach, allow us to select many effective types of neural network models from the set of valid ones, and then determine the most effective type of them.
Cyber Attacks , Network Resources , Neural Network Models , Procedural Rules
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Zhangir Khan West Kazakhstan Agrarian-Technical University, West-Kazakhstan Region, Uralsk, Kazakhstan
Makhambet Utemisov West Kazakhstan University, West-Kazakhstan Region, Uralsk, Kazakhstan
Zhangir Khan West Kazakhstan Agrarian-Technical University
Makhambet Utemisov West Kazakhstan University
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