Network Intrusion Detection System Using Voting Ensemble Machine Learning

Md. Raihan-Al-Masud, H. Mustafa
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引用次数: 6

Abstract

Due to increasing amount of cyber attack, there is a growing demand for Network intrusion detection systems (NIDSs) which are necessary for defending from potential attacks. Detecting and preventing cyber attacks is one of the key research areas. Existing NIDSs use traditional machine learning algorithms with low accuracy and are also not suitable for the new unknown cyber attacks. In this paper, we propose a NIDS model with ensemble machine learning methods. Ensemble machine learning methods have the potential to detect and prevent different types of attacks compared to traditional machine learning methods. Our proposed system can detect known attacks as well as can prevent unknown attacks. Our proposed system uses ensemble machine learning methods with Voting. We used the full NSL-KDD dataset to evaluate the performance of multiclass classification and we also compare the performance with deep learning as well as traditional base level machine learning techniques. Experimental results show that the proposed NIDS system is superior to the performance of existing methods. Our model improves the detection rate of the IDS which is vital for network intrusion detection systems.
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基于投票集成机器学习的网络入侵检测系统
由于网络攻击的数量不断增加,对网络入侵检测系统(nids)的需求不断增长,这是防御潜在攻击所必需的。网络攻击的检测与预防是网络安全研究的重点领域之一。现有的网络入侵防御系统使用传统的机器学习算法,准确率较低,也不适合新的未知网络攻击。在本文中,我们提出了一个集成机器学习方法的NIDS模型。与传统的机器学习方法相比,集成机器学习方法具有检测和预防不同类型攻击的潜力。该系统既能检测已知攻击,又能防止未知攻击。我们提出的系统使用集成机器学习方法与投票。我们使用完整的NSL-KDD数据集来评估多类分类的性能,并将其与深度学习以及传统的基础级机器学习技术进行了比较。实验结果表明,所提出的NIDS系统的性能优于现有的方法。该模型提高了入侵检测系统的检测率,这对网络入侵检测系统至关重要。
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