网络攻击检测的未来路线图

Raha Soleymanzadeh, R. Kashef
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引用次数: 2

摘要

网络攻击会导致全球运营的延迟和巨大的经济损失。因此,人们对网络攻击检测(CAD)产生了更大的兴趣,以适应攻击数量的指数增长。各种CAD技术已经开发出来,包括机器学习(ML)和深度学习(DL)。虽然对不平衡数据进行了许多研究,但大多数研究都存在可能导致数据丢失或过拟合的弱点。然而,生成对抗网络可以通过生成与现有数据相似的新虚拟数据来帮助解决过拟合和类重叠等问题。本文全面概述了当前CAD方法的文献,从而揭示了当前的研究,并绘制了不同应用中网络攻击检测的未来路线图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Future Roadmap for Cyber-attack Detection
Cyber-attacks can cause delays in world operations and substantial economic losses. Therefore, there is a greater interest in cyber-attack detection (CAD) to accommodate the exponential increase in the number of attacks. Various CAD techniques have been developed, including Machine Learning (ML) and Deep Learning (DL). Despite the high accuracy of the deep learning-based method when learning from large amounts of data, the performance drops considerably when learning from imbalanced data. While many studies have been conducted on imbalanced data, the majority possess weaknesses that can lead to data loss or overfitting. However, Generative Adversarial Networks can help solve problems such as overfitting and class overlapping by generating new virtual data similar to the existing data. This paper provides a comprehensive overview of the current literature in CAD methods, thus shedding light on present research and drawing a future road map for cyber-attack detection in different applications.
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