Current Status and Challenges and Future Trends of Deep Learning-Based Intrusion Detection Models.

IF 2.7 Q3 IMAGING SCIENCE & PHOTOGRAPHIC TECHNOLOGY Journal of Imaging Pub Date : 2024-10-14 DOI:10.3390/jimaging10100254
Yuqiang Wu, Bailin Zou, Yifei Cao
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Abstract

With the advancement of deep learning (DL) technology, DL-based intrusion detection models have emerged as a focal point of research within the domain of cybersecurity. This paper provides an overview of the datasets frequently utilized in the research. This article presents an overview of the widely utilized datasets in the research, establishing a basis for future investigation and analysis. The text subsequently summarizes the prevalent data preprocessing methods and feature engineering techniques utilized in intrusion detection. Following this, it provides a review of seven deep learning-based intrusion detection models, namely, deep autoencoders, deep belief networks, deep neural networks, convolutional neural networks, recurrent neural networks, generative adversarial networks, and transformers. Each model is examined from various dimensions, highlighting their unique architectures and applications within the context of cybersecurity. Furthermore, this paper broadens its scope to include intrusion detection techniques facilitated by the following two large-scale predictive models: the BERT series and the GPT series. These models, leveraging the power of transformers and attention mechanisms, have demonstrated remarkable capabilities in understanding and processing sequential data. In light of these findings, this paper concludes with a prospective outlook on future research directions. Four key areas have been identified for further research. By addressing these issues and advancing research in the aforementioned areas, this paper envisions a future in which DL-based intrusion detection systems are not only more accurate and efficient but also better aligned with the dynamic and evolving landscape of cybersecurity threats.

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基于深度学习的入侵检测模型的现状、挑战和未来趋势。
随着深度学习(DL)技术的发展,基于 DL 的入侵检测模型已成为网络安全领域的研究焦点。本文概述了研究中经常使用的数据集。本文概述了研究中广泛使用的数据集,为今后的调查和分析奠定了基础。文章随后总结了入侵检测中常用的数据预处理方法和特征工程技术。随后,文章回顾了七种基于深度学习的入侵检测模型,即深度自动编码器、深度信念网络、深度神经网络、卷积神经网络、循环神经网络、生成对抗网络和变换器。本文从多个维度对每种模型进行了研究,强调了它们在网络安全背景下的独特架构和应用。此外,本文还扩展了范围,纳入了由以下两个大型预测模型促成的入侵检测技术:BERT 系列和 GPT 系列。这些模型利用变压器和注意力机制的力量,在理解和处理序列数据方面表现出了非凡的能力。鉴于这些发现,本文最后对未来的研究方向进行了展望。本文确定了进一步研究的四个关键领域。通过解决这些问题并推进上述领域的研究,本文设想未来基于 DL 的入侵检测系统不仅会更准确、更高效,而且还能更好地适应网络安全威胁不断变化的动态环境。
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来源期刊
Journal of Imaging
Journal of Imaging Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
5.90
自引率
6.20%
发文量
303
审稿时长
7 weeks
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