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Network Intrusion Detection using Supervised Machine Learning Technique with Feature Selection

机译:使用具有特征选择的监督机器学习技术进行网络入侵检测

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摘要

A novel supervised machine learning system is developed to classify network traffic whether it is malicious or benign. To find the best model considering detection success rate, combination of supervised learning algorithm and feature selection method have been used. Through this study, it is found that Artificial Neural Network (ANN) based machine learning with wrapper feature selection outperform support vector machine (SVM) technique while classifying network traffic. To evaluate the performance, NSL-KDD dataset is used to classify network traffic using SVM and ANN supervised machine learning techniques. Comparative study shows that the proposed model is efficient than other existing models with respect to intrusion detection success rate.
机译:开发了一种新颖的监督式机器学习系统,以对网络流量进行恶意分类或良性分类。为了找到考虑检测成功率的最佳模型,将监督学习算法和特征选择方法结合使用。通过这项研究,发现在对网络流量进行分类时,具有包装特征选择的基于人工神经网络(ANN)的机器学习性能优于支持向量机(SVM)技术。为了评估性能,NSL-KDD数据集用于使用SVM和ANN监督的机器学习技术对网络流量进行分类。比较研究表明,在入侵检测成功率方面,该模型比其他现有模型有效。

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