Publication Date: 2022/10/04
Abstract: Recent years have seen the successful application of deep learning techniques, an enhanced model of conventional machine learning, in a variety of fields, including banking, entertainment, coordinating, health care, and cyber security. The study concentrated on a thorough examination of deep learning techniques in cyber security. Adversarial attacks have emerged as a more significant security threat to many deep learning applications than machine learning in the real world as deep learning techniques have become the core components for many security-critical applications such as identity recognition cameras, malware detection software, intrusion detection, spam detection, and selfdriving cars. Through a review of the literature and consideration of the important research topics, this paper gives a thorough study on the Deep Learning process, supervised, and unsupervised approaches. The survey also discusses important DL architectures used in cyber security applications.
Keywords: Deep learning, Cyber Security, Supervised learning, and Unsupervised learning.
DOI: https://doi.org/10.5281/zenodo.7141277
PDF: https://ijirst.demo4.arinfotech.co/assets/upload/files/IJISRT22SEP037.pdf
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