4.6 Review

Machine Learning and Deep Learning Approaches for CyberSecurity: A Review

Journal

IEEE ACCESS
Volume 10, Issue -, Pages 19572-19585

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2022.3151248

Keywords

Intrusion detection; Machine learning; Deep learning; Computer security; Machine learning algorithms; Network security; Computer hacking; Cybersecurity; machine learning; deep learning; intrusion detection system

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This paper reviews intrusion detection systems and discusses the types of learning algorithms used by machine learning and deep learning to protect data from malicious behavior. It further discusses recent work on machine learning and deep learning, including various network implementations, applications, algorithms, learning approaches, and datasets, to develop an operational intrusion detection system.
The rapid evolution and growth of the internet through the last decades led to more concern about cyber-attacks that are continuously increasing and changing. As a result, an effective intrusion detection system was required to protect data, and the discovery of artificial intelligence's sub-fields, machine learning, and deep learning, was one of the most successful ways to address this problem. This paper reviewed intrusion detection systems and discussed what types of learning algorithms machine learning and deep learning are using to protect data from malicious behavior. It discusses recent machine learning and deep learning work with various network implementations, applications, algorithms, learning approaches, and datasets to develop an operational intrusion detection system.

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