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Title: | Deep Learning Models For Cyber Security In Iot Networks |
Authors: | Gowda, V Dankan Puneeth Kumar, B S Shekhar, R Dadheech, Pankaj Thangadurai, N |
Keywords: | Deep learning Cyber security IoT networks Internet of things |
Issue Date: | 2022 |
Publisher: | IGI Global |
Citation: | pp. 112-127 |
Abstract: | As the number of connected devices grows, the internet of things (IoT) poses new security challenges for network activity monitoring. Due to a lack of security understanding on the side of device producers and end users, the majority of internet of things devices are vulnerable. As a result, virus writers have found them to be great targets for converting them into bots and using them to perform large-scale attacks against a variety of targets. The authors provide deep learning models based on deep reinforcement learning for cyber security in IoT networks in this chapter. The IoT is a potential network that connects both living and nonliving things all around the world. As the popularity of IoT grows, cyber security remains a shortcoming, rendering it exposed to a variety of cyber-attacks. It should be emphasized, however, that while there are numerous DL algorithms presently, the scientific literature does not yet include a comprehensive catalogue of them. This chapter provides a complete list of DL algorithms as well as their many application areas. © 2022, IGI Global. All rights reserved. |
URI: | https://doi.org/10.4018/978-1-6684-4558-7.ch004 http://gnanaganga.inflibnet.ac.in:8080/jspui/handle/123456789/2487 |
ISBN: | 9781668445600 9781668445587 |
Appears in Collections: | Book/ Book Chapters |
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