使用混合机器学习方法的网络入侵检测

Karina Čiurlienė, Denisas Stankevičius
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引用次数: 0

摘要

网络入侵检测是网络安全的一个相关研究领域。越来越多的入侵需要更复杂的方法来保护计算机网络。各种机器学习算法用于检测网络入侵和异常,但其准确性有限。在本研究中,我们通过应用混合机器学习算法来解决改进网络级入侵检测的问题。本文提出了三种新的混合机器学习方法,并使用两个公开可用的数据集CSE-CIC-IDS2018和NSW-NB-15研究了它们的准确性。为了提高分类模型的准确率,进行了超参数优化。采用迭代法和χ2检验来识别数据集的显著特征。分析研究结果发现,采用决策树、朴素贝叶斯和多层感知器算法组成的混合算法,网络异常识别准确率最高,达到99.34%。所获得的结果比单个机器学习算法所达到的最佳精度高3.13%。为了全面评价所研究的机器学习算法及其在计算机网络入侵检测中的适用性,采用SCR、DR、FR排序方法对算法进行排序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
NETWORK INTRUSION DETECTION USING HYBRID MACHINE LEARNING METHODS
Network intrusion detection is a relevant cybersecurity research field. The growing number of intrusions requires more sophisticated methods to protect computer networks. Various machine learning algorithms are used to detect network intrusions and anomalies, but their accuracy is limited. In this research, we address the problem of improving network-level intrusion detection by applying hybrid machine-learning algorithms. The paper proposes three new hybrid machine learning methods and investigates their accuracy using two publicly available datasets CSE-CIC-IDS2018 and NSW-NB-15. In order to increase the accuracy of the classification models, hyperparameter optimization was performed. The iteration method and the Chi-square χ2 test were used to identify significant features of the data set. Analyzing the research results, it was found that the highest network anomaly recognition accuracy of 99.34% was achieved by applying a hybrid algorithm consisting of a decision tree, naive Bayesian, and multilayer perceptron algorithms. Achieved result is 3.13% higher than the best accuracy achieved by individual machine learning algorithms. In order to comprehensively evaluate the studied machine learning algorithms and their suitability for detecting intrusions in a computer network, the algorithms were ranked using the SCR, DR, FR ranking methods.
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