Generative Adversarial Networks in Security: A Survey

I. Dutta, Bhaskar Ghosh, Albert H Carlson, Michael W. Totaro, M. Bayoumi
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引用次数: 12

Abstract

In the Information Age, the majority of data stored and transferred is digital; however, current security systems are not powerful enough to secure this data because they do not anticipate unknown attacks. With a growing number of attacks on cybersecurity systems defense mechanisms need to stay updated with the evolving threats. Security and their related attacks are an iterative pair of objects that learn to enhance themselves based upon each others’ advances – a cybersecurity "arms race." In this survey, we focus on the various ways in which Generative Adversarial Networks (GANs) have been used to provide both security advances and attack scenarios in order to bypass detection systems. The aim of our survey is to examine works completed in the area of GANs, specifically device and network security. This paper also discusses new challenges for intrusion detection systems that have been generated using GANs. Considering the promising results that have been achieved in different GAN applications, it is very likely that GANs can shape security advances if applied to cybersecurity.
安全中的生成对抗网络:综述
在信息时代,存储和传输的大部分数据都是数字化的;然而,目前的安全系统还不足以保护这些数据,因为它们无法预测未知的攻击。随着对网络安全系统的攻击越来越多,防御机制需要跟上不断变化的威胁。安全和相关的攻击是一对迭代的对象,它们在彼此的进步基础上学习增强自己——一场网络安全“军备竞赛”。在本调查中,我们重点关注生成对抗网络(gan)用于提供安全进步和攻击场景以绕过检测系统的各种方式。我们调查的目的是检查在gan领域完成的工作,特别是设备和网络安全。本文还讨论了使用gan生成的入侵检测系统所面临的新挑战。考虑到在不同GAN应用中取得的有希望的结果,如果应用于网络安全,GAN很可能会塑造安全进步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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