论文标题

网络安全威胁检测和保护的深度强化学习:评论

Deep Reinforcement Learning for Cybersecurity Threat Detection and Protection: A Review

论文作者

Sewak, Mohit, Sahay, Sanjay K., Rathore, Hemant

论文摘要

网络安全威胁景观最近变得过于复杂。威胁参与者以非常协调的方式利用网络中的弱点和端点安全性,以使复杂的攻击永存,这可能会降低整个网络以及网络中的许多关键主机。越来越高级的深度和基于机器的解决方案已用于威胁检测和保护。这些技术的应用在科学文献中得到了很好的审查。深入的强化学习在为早些时候需要先进人类认知的领域开发基于AI的解决方案方面表现出了巨大的希望。深入强化学习下的不同技术和算法在从游戏到工业流程的应用中显示出巨大的希望,在这些应用程序中,声称它可以增强具有一般AI功能的系统。这些算法最近也用于网络安全性,尤其是在威胁检测和端点保护方面,其中这些算法显示出最先进的结果。与监督的机器和深度学习不同,深度强化学习的使用方式更加多样化,并且正在赋予威胁防御格局中许多创新的应用。但是,对这些独特的应用和成就没有任何全面审查。因此,在本文中,我们打算填补这一空白,并对网络安全威胁检测和保护中深入增强学习的不同应用进行全面审查。

The cybersecurity threat landscape has lately become overly complex. Threat actors leverage weaknesses in the network and endpoint security in a very coordinated manner to perpetuate sophisticated attacks that could bring down the entire network and many critical hosts in the network. Increasingly advanced deep and machine learning-based solutions have been used in threat detection and protection. The application of these techniques has been reviewed well in the scientific literature. Deep Reinforcement Learning has shown great promise in developing AI-based solutions for areas that had earlier required advanced human cognizance. Different techniques and algorithms under deep reinforcement learning have shown great promise in applications ranging from games to industrial processes, where it is claimed to augment systems with general AI capabilities. These algorithms have recently also been used in cybersecurity, especially in threat detection and endpoint protection, where these are showing state-of-the-art results. Unlike supervised machines and deep learning, deep reinforcement learning is used in more diverse ways and is empowering many innovative applications in the threat defense landscape. However, there does not exist any comprehensive review of these unique applications and accomplishments. Therefore, in this paper, we intend to fill this gap and provide a comprehensive review of the different applications of deep reinforcement learning in cybersecurity threat detection and protection.

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