A New Network Intrusion Detection based on Semi-supervised Dimensionality Reduction and Tri-LightGBM

Hao Zhang, Jieling Li
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引用次数: 1

Abstract

With the development of technology and threat forms, network intrusion detection has become a challenging task. The intrusion detection algorithm based on supervised learning requires a lot of manpower and material resources to obtain a large amount of labeled data. Besides, the accuracy of unsupervised learning can not meet the requirements of intrusion detection systems. We propose a semi-supervised network intrusion detection method in this paper. Information Gain is employed to filter redundancy features. Then, we combine labeled samples with unlabeled samples and adopt Principal Component Analysis (PCA) to convert multiple features into comprehensive features. Finally, an Tri-Training strategy is adopted to integrate the basic LightGBM classifier, and make full use of unlabeled data to generate pseudo labels, thereby optimizing the basic LightGBM classifier. To verify the effectiveness of the proposed approach, a large number of experiments are performed on the UNSW-NB15 dataset. The experimental results fully show that the method is superior in improving detection efficiency and reducing label dependence, and has a lower false alarm rate and a higher detection rate.
一种基于半监督降维和Tri-LightGBM的网络入侵检测方法
随着技术和威胁形式的发展,网络入侵检测已成为一项具有挑战性的任务。基于监督学习的入侵检测算法需要耗费大量的人力物力来获取大量的标记数据。此外,无监督学习的精度不能满足入侵检测系统的要求。本文提出了一种半监督网络入侵检测方法。利用信息增益来过滤冗余特征。然后,我们将标记的样本与未标记的样本结合起来,采用主成分分析(PCA)将多个特征转化为综合特征。最后,采用Tri-Training策略对基本LightGBM分类器进行整合,充分利用未标记数据生成伪标签,从而对基本LightGBM分类器进行优化。为了验证该方法的有效性,在UNSW-NB15数据集上进行了大量实验。实验结果充分表明,该方法在提高检测效率和降低标签依赖性方面具有优势,并且具有较低的虚警率和较高的检测率。
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