Network Data Feature Selection in Detecting Network Intrusion using Supervised Machine Learning Techniques

Arjonel M. Mendoza, Rowell M. Hernandez, Ryndel V. Amorado, Myrna A. Coliat, Poul Isaac C. De Chavez
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Abstract

Network attacks have become necessary in today’s time due to increased network traffic. To determine whether network traffic is normal or anomalous a supervised machine learning system is developed. A network intrusion detection system (IDS) is a must-have piece of a security system. This proposed study aims to discover new patterns automatically from substantial quantities of network data, reducing time manually compiling intrusion and normal behavior patterns. The best model in terms of detection success rate was discovered using a supervised learning algorithm and feature selection method. AdaBoost outperforms Neural Network, kNN, and Naive Bayes in supervised machine learning with feature selection in this study, with a detection accuracy of 100.00%, 99.30%, 91.60%, and 99.70%, respectively. The Network Intrusion Detection dataset is used to classify network intrusions to evaluate the study and it has also been used in past studies. On the other hand, the proposed model proved to be more effective than other studies in terms of intrusion detection. The proposed approach can be used in various fields, including finance, health, and transportation. Furthermore, additional parameter tuning could be added, and different feature selection techniques could be used to improve the performance of the classifiers.
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使用监督机器学习技术检测网络入侵中的网络数据特征选择
由于网络流量的增加,网络攻击在当今时代变得必要。为了确定网络流量是正常还是异常,开发了一个有监督的机器学习系统。网络入侵检测系统(IDS)是安全系统中必不可少的一部分。本研究旨在从大量的网络数据中自动发现新的模式,减少人工编译入侵和正常行为模式的时间。利用有监督学习算法和特征选择方法找到了检测成功率最高的模型。在本研究中,AdaBoost在带特征选择的监督机器学习中优于神经网络、kNN和朴素贝叶斯,检测准确率分别为100.00%、99.30%、91.60%和99.70%。使用网络入侵检测数据集对网络入侵进行分类来评估研究,并且在过去的研究中也使用了该数据集。另一方面,该模型在入侵检测方面比其他研究更有效。所提出的方法可用于各个领域,包括金融、卫生和运输。此外,可以添加额外的参数调优,并且可以使用不同的特征选择技术来提高分类器的性能。
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