人工神经网络在入侵检测中的研究进展

Loreen Mahmoud, R. Praveen
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引用次数: 16

摘要

如今,网络攻击变得越来越复杂和难以识别,传统的入侵检测系统在预测新的攻击类型方面变得低效。由于入侵检测是保证网络实时安全的重要因素,人们提出了许多新的有效的入侵检测方法。在本文中,我们打算讨论不同的基于人工神经网络的IDS方法,并将它们分为四类(normal ANN, DNN, CNN, RNN),并根据不同的性能参数(准确率,FNR, FPR,训练时间,epoch和学习率)以及网络结构,分类类型,使用的数据集等其他因素对它们进行比较。在调查的最后,我们将提到每种方法的优点和缺点,并提出一些改进建议,以避免注意到的缺点。
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Artificial Neural Networks for detecting Intrusions: A survey
Nowadays, the networks attacks became very sophisticated and hard to be recognized, The traditional types of intrusion detection systems became inefficient in predicting new types of attacks. As the IDS is an important factor in securing the network in the real time, many new effective IDS approaches have been proposed. In this paper, we intend to discuss different Artificial Neural Networks based IDS approaches, also we are going to categorize them in four categories (normal ANN, DNN, CNN, RNN) and make a comparison between them depending on different performance parameters (accuracy, FNR, FPR, training time, epochs and the learning rate) and other factors like the network structure, the classification type, the used dataset. At the end of the survey, we will mention the merits and demerits of each approach and suggest some enhancements to avoid the noticed drawbacks.
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