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Towards secure intrusion detection systems using deep learning techniques: Comprehensive analysis and review

机译:利用深层学习技术迈向安全入侵检测系统:综合分析和审查

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摘要

Providing a high-performance Intrusion Detection System (IDS) can be very effective in controlling malicious behaviors and cyber-attacks. Regarding the ever-growing negative impacts of the security attacks on computer systems and networks, various Artificial Intelligence (AI)-based techniques have been used to introduce versatile IDS approaches. Deep learning is a branch of AI techniques, mainly based on multi-layer artificial neural networks. Recently, deep learning techniques have gained momentum in the intrusion detection domain and several IDS approaches are provided in the literature using various deep neural networks to deal with privacy concerns and security threats. For this purpose, this article focuses on the deep IDS approaches and investigates how deep learning networks are employed by different approaches in different steps of the intrusion detection process to achieve better results. It classifies the studied IDS schemes regarding the deep learning networks utilized in them and describes their main contributions and capabilities. Besides, in each category, their main features such as evaluated metrics, datasets, simulators, and environments are compared. Also, a comparison of the deep IDS approaches main properties are provided to illuminate the main techniques applied in them as well as the area less focused in the literature. Finally, the concluding remarks in the deep IDS context are provided and possible directions at the subsequent studies are listed.
机译:提供高性能入侵检测系统(IDS)可以非常有效地控制恶意行为和网络攻击。关于对计算机系统和网络的安全攻击的不断增长的负面影响,已使用各种人工智能(AI)基础的技术来引入通用IDS方法。深度学习是AI技术的分支,主要基于多层人工神经网络。最近,深入学习技术在入侵检测领域获得了势头,并且在文献中使用各种深神经网络提供了几种IDS方法,以处理隐私问题和安全威胁。为此目的,本文重点介绍了深度ID方法,并调查如何在入侵检测过程的不同步骤中通过不同方法采用深度学习网络,以实现更好的结果。它对研究中使用的深度学习网络进行了分类,并描述了它们的主要贡献和能力。此外,在每个类别中,比较它们的主要功能,例如评估的指标,数据集,模拟器和环境。而且,提供了深度IDS接近主要性质的比较,以照亮它们中应用的主要技术以及在文献中少集中的区域。最后,提供了深度IDS背景下的结论备注,并列出了后续研究的可能指示。

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