基于UNSW-NB15数据集的网络入侵检测:基于堆叠机器学习的方法

M. H. Kabir, Md. Shahriar Rajib, Abu Saleh Md. Mahfujur Rahman, M. Rahman, Samrat Kumar Dey
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引用次数: 4

摘要

在网络威胁领域,网络入侵已成为行业和政府机构关注的首要问题。为了应对这种威胁,网络入侵检测系统被认为是识别网络流量正常或异常的关键。网络入侵检测系统(NIDS)的准确性决定了能否将潜在威胁作为异常进行正确识别。在网络入侵检测模型中,常用的方法有单经典方法、混合方法和集成方法。为了提高NIDS的准确率,本文提出了两种不同的叠加机器学习(ML)模型,分别采用额外树(ET)分类器和互信息增益特征选择方法。将该模型应用于包含最新攻击类型的UNSW-NB15数据包数据集上,实验证明了堆叠模型的测试精度优于所有单个模型。对比结果还表明,我们提出的模型比其他任何现有的竞争模型具有更好的准确率(96.24%)。
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Network Intrusion Detection Using UNSW-NB15 Dataset: Stacking Machine Learning Based Approach
Network intrusion has become a prime concern issue for the industry and government organizations in the domain of the cyber-threat landscape. To counter this threat, a network intrusion detection system has been considered to be vital in identifying network traffic as normal or anomaly. Correct identification of the potential threat as an anomaly depends on the accuracy of the Network Intrusion Detection System (NIDS). Several approaches like single classical, hybrid, and ensemble methods are in practice to develop a network intrusion detection model. In this paper, two different stacking Machine Learning (ML) models with Extra Tree (ET) Classifier and Mutual Information Gain feature selection methods are proposed for better accuracy of the NIDS. We applied the models on the UNSW-NB15 packet-based dataset which contains the most recent attack types and experimentally proved that the testing accuracy of the stacking models is better than all individual models. Comparative results also depict that one of our proposed models shows better accuracy (96.24%) than any other existing competing models.
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