Network Attack Detection With SNMP-MIB Using Deep Neural Network

Author:

Alkasassbeh Mouhammd Sharari1,Khairallah Mohannad Zead1

Affiliation:

1. Computer Science Department, Princess Sumaya University for Technology, Jordan

Abstract

Over the past decades, the Internet and information technologies have elevated security issues due to the huge use of networks. Because of this advance information and communication and sharing information, the threats of cybersecurity have been increasing daily. Intrusion Detection System (IDS) is considered one of the most critical security components which detects network security breaches in organizations. However, a lot of challenges raise while implementing dynamics and effective NIDS for unknown and unpredictable attacks. Consider the machine learning approach to developing an effective and flexible IDS. A deep neural network model is proposed to increase the effectiveness of intrusions detection system. This chapter presents an efficient mechanism for network attacks detection and attack classification using the Management Information Base (MIB) variables with machine learning techniques. During the evaluation test, the proposed model seems highly effective with deep neural network implementation with a precision of 99.6% accuracy rate.

Publisher

IGI Global

Reference21 articles.

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3. A Novel Hybrid Method for Network Anomaly Detection Based on Traffic Prediction and Change Point Detection.;M.Al-Kasassbeh;Journal of Computational Science,2018

4. Network fault detection with Wiener filter-based agent

5. Towards Generating Realistic SNMP-MIB Dataset for Network Anomaly Detection.;M.Al-Kasassbeh;International Journal of Computer Science and Information Security,2016

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