A Comprehensive Survey for Machine Learning and Deep Learning Applications for Detecting Intrusion Detection

Ola M. Surakhi, A. García, Mohammed Jamoos, Mohammad Y. Alkhanafseh
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引用次数: 2

Abstract

The rapid development in computer network and internet have resulted in increased corresponding data and network attacks. Many novels and improvement technologies have been developed in the literature to handle security issues in the network and accurately detect intrusions. Intrusion Detection System (IDS) is one of the technological tools that aim to ensure confidentiality, integrity and availability of the system by preventing possible intrusions. Despite its effectiveness in reducing network intrusion, the IDS still face some challenges in improving detection accuracy and False Error Rate (FER). Recently, researchers have shifted toward the use of Machine Learning (ML) and Deep Learning (DL) methods to enhance the performance of IDS by increasing accuracy rate and reducing (FER). The improvement in the performance of IDS system depends on the detection method used, benchmark dataset and IDS environment. This paper aims to provide a comprehensive survey for the most recent articles that have been published between 2018 and 2021 which used ML and DL methods to improve IDS accuracy. The selected papers are analysed to cover an overview about the following aspects: (1) IDS concepts and taxonomy. (2) ML and DL methods along with strengths and weaknesses for each one. (3) Benchmark datasets of IDS. (4) Comprehensive review about the most recent articles in this domain with the advancement provided by each work in terms of methodology and dataset used with highlighting the strengths and weaknesses of each work. Finally, the challenges and the future scope for the research in IDS based ML and DL are provided.
机器学习和深度学习在入侵检测中的应用综述
随着计算机网络和互联网的飞速发展,相应的数据和网络攻击也越来越多。为了处理网络中的安全问题,准确检测入侵,文献中已经发展了许多新的和改进的技术。入侵检测系统(IDS)是一种旨在通过防止可能的入侵来确保系统保密性、完整性和可用性的技术工具。尽管IDS在减少网络入侵方面取得了一定的效果,但在提高检测准确率和误报率方面仍面临一些挑战。最近,研究人员转向使用机器学习(ML)和深度学习(DL)方法,通过提高准确率和降低(FER)来提高IDS的性能。IDS系统性能的提高取决于所采用的检测方法、基准数据集和IDS环境。本文旨在对2018年至2021年间发表的最新文章进行全面调查,这些文章使用ML和DL方法来提高IDS的准确性。本文对所选论文进行了分析,概述了以下几个方面:(1)入侵检测系统的概念和分类。(2) ML和DL方法以及各自的优缺点。(3) IDS的基准数据集。(4)全面回顾该领域的最新文章,从方法论和使用的数据集方面介绍每篇文章的进展,并突出每篇文章的优缺点。最后,提出了基于机器学习和深度学习的IDS研究面临的挑战和未来的研究方向。
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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