Machine learning to combat cyberattack: a survey of datasets and challenges

Arvind Prasad, S. Chandra
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引用次数: 6

Abstract

The ever-increasing number of multi-vector cyberattacks has become a concern for all levels of organizations. Attackers are infecting Internet-enabled devices and exploiting them to carry out attacks. These devices are unwittingly becoming part of carrying out cyberattacks. Many studies have proposed machine learning–based promising solutions to stamp out cyberattacks preemptively. We review the machine learning techniques and highlight some promising solutions in recent studies. This study provides the advantage of experimenting with the developed solutions on modern datasets. This survey aims to provide an insightful organization of current developments in cybersecurity datasets and give suggestions for further research. We identified the most frightful cyberattacks and suitable datasets having records related to the attack. This paper discusses modern datasets such as CICIDS2017, CSE-CIC-IDS-2018, CIC-DDoS2019, UNSW-NB15, UNSW-TonIOT, UNSW-BotIoT, DoHBrw2020, and ISCX-URL-2016, which include records of recent sophisticated cyberattacks. This paper will focus on these modern datasets, retrieve detailed knowledge, and experiment with the most commonly used machine learning algorithms. We identify datasets as a significant centric topic that can be addressed with innovative machine learning approaches and solutions to defend against cyberattacks.
对抗网络攻击的机器学习:数据集和挑战的调查
越来越多的多向量网络攻击已经成为各级组织关注的问题。攻击者正在感染支持互联网的设备并利用它们进行攻击。这些设备正在不知不觉中成为实施网络攻击的一部分。许多研究提出了基于机器学习的有前途的解决方案,以先发制人地消除网络攻击。我们回顾了机器学习技术,并强调了最近研究中一些有前途的解决方案。本研究提供了在现代数据集上对开发的解决方案进行实验的优势。本调查旨在为网络安全数据集的当前发展提供一个有见地的组织,并为进一步的研究提供建议。我们确定了最可怕的网络攻击和与攻击相关的合适数据集。本文讨论了CICIDS2017、CSE-CIC-IDS-2018、CIC-DDoS2019、UNSW-NB15、UNSW-TonIOT、UNSW-BotIoT、DoHBrw2020和ISCX-URL-2016等现代数据集,其中包括近期复杂网络攻击的记录。本文将重点关注这些现代数据集,检索详细的知识,并使用最常用的机器学习算法进行实验。我们将数据集确定为一个重要的中心主题,可以通过创新的机器学习方法和解决方案来应对网络攻击。
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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