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Anomaly Detection in Network Traffic using Machine Learning for Early Threat Detection

By
Mohammed Hussein Thwaini ,
Mohammed Hussein Thwaini

University of Fallujah, Applied Sciences College, Iraq

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Abstract

Due to advances in network technologies, the amount of people using networks is rising rapidly. This has resulted in a large amount of transmission information being generated and moved across the network. However, this data is vulnerable to attacks and intrusions. To prevent network intrusions, security measures must be implemented, which can detect anomalies and identify potential threats. Network security researchers and labs have done extensive research in network security. The purpose of this study was to perform a noninvasive inspection to give a large general mechanism on recent advances in abnormality detection. The study reviewed recent research published in the past five years, which examined new technologies and potential future opportunities in anomaly detection. The literature review focused specifically on anomaly detection systems used in network traffic. This included various applications such as Wireless Sensor Networks (WSN), Internet of Things (IoT), High Performance Computing, Industrial Control Systems (ICS), and Software Defined Networking (SDN) environments. The review concludes by highlighting several unresolved issues that need to be addressed in order to improve anomaly detection systems.

How to Cite

1.
Thwaini MH. Anomaly Detection in Network Traffic using Machine Learning for Early Threat Detection. Data and Metadata [Internet]. 2022 Dec. 23 [cited 2024 May 17];1:34. Available from: https://dm.saludcyt.ar/index.php/dm/article/view/72

The article is distributed under the Creative Commons Attribution 4.0 License. Unless otherwise stated, associated published material is distributed under the same licence.

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