Публікація:
System for detecting network anomalies using a hybrid of an uncontrolled and controlled neural network

Ескіз

Дата

2019

Назва видання

ISSN

Назва тому

Видання

Криворізький державний педагогічний університет

Дослідницькі проекти

Структурні одиниці

Випуск видання

Анотація

In this article realization method of attacks and anomalies detection with the use of training of ordinary and attacking packages, respectively. The method that was used to teach an attack on is a combination of an uncontrollable and controlled neural network. In an uncontrolled network, attacks are classified in smaller categories, taking into account their features and using the selforganized map. To manage clusters, a neural network based on back-propagation method used. We use PyBrain as the main framework for designing, developing and learning perceptron data. This framework has a sufficient number of solutions and algorithms for training, designing and testing various types of neural networks. Software architecture is presented using a procedural-object approach. Because there is no need to save intermediate result of the program (after learning entire perceptron is stored in the file), all the progress of learning is stored in the normal files on hard disk.

Опис

Ключові слова

neural network, learning, intrusion, anomalies detection, SOM

Бібліографічний опис

System for detecting network anomalies using a hybrid of an uncontrolled and controlled neural network [Electronic resourse] / Galina Kirichek, Vladyslav Harkusha, Artur Timenko, Nataliia Kulykovska // Computer Science & Software Engineering : proc. of the 2nd Student Workshop (CS&SE@SW 2019), Kryvyi Rih, Ukraine, November 29, 2019 / ed. by : Arnold E. Kiv, Serhiy O. Semerikov, Vladimir N. Soloviev, Andrii M. Striuk. – Electronic text data. – Kryvyi Rih : KDPU. – Vol. 2546. – P. 138-148. – URL: https://ceur-ws.org/Vol-2546/paper09.pdf, free (advanced 24.10.24.).

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