Review on Generative Deep Learning Models and Datasets for Intrusion Detection Systems
Gayatri Ketepalli, Premamayudu Bulla
Abstract
Intrusion detection systems (IDSs) play an essential role in defense of all networks and information systems around the world. IDS is one way of reducing malicious attacks. When attackers adjust their attack tactics and find alternative attack strategies, IDS must also develop through more advanced methods. Deep learning is a subfield of machine learning (ML) methods focused on learning results. A comprehensive review of various deep learning methods employed in IDSs is discussed first in this paper. Then a deep classification scheme is introduced, and the significant works recorded in the deep learning works are summarized. We performed a taxonomy survey of the deep architectures and algorithms accessible in these works and grouped such algorithms into three groups: hierarchical, composite, and generative. Afterward, a wide range of intrusion detection fields investigates selected deep learning applications. Finally, we address common types of datasets and frameworks.