Detection computer network intrusion using deep neural networks

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National Technical University "Kharkiv Polytechnic Institute"

Abstract

In this work, the effectiveness of using classical machine learning methods and modern deep neural network models for intrusion detection in computer networks has been investigated. The purpose of this work is to develop a model for detecting intrusions into computer networks based on the Transformer model using tabular input data. In this work, the UNSW-NB15 dataset is used as the source data. This dataset contains information about normal network behaviour as well as during synthetic intrusions. Models for intrusion detection in computer networks based on machine learning methods were investigated: Decision Tree, KNN, Logistic Regression, SVM, Gradient Boosting, Random Forest. A method of converting tabular data into images was developed, which made it possible to build intrusion detection models based on Vision Transformer and Vision Transformer for small-size datasets on modern Transformer architecture. The research results showed that developed model based on Vision Transformer and Vision Transformer for small-size datasets improves the quality of identification, and eliminates the need for a preprocessing step such as dimensionality reduction.

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Gavrylenko S. Detection computer network intrusion using deep neural networks / Svitlana Gavrylenko, Vadym Poltoratskyi // 2024 IEEE 5th KhPI Week on Advanced Technology (KhPIWeek) : proc. of the Intern. Conf., October 07-11, 2024. – Kharkiv : NTU "KhPI", 2024. – 5 p.

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