A New Random Forest and Support Vector Machine-based Intrusion Detection Model in Networks

被引:0
|
作者
Prasenjit Dey
Dhananjoy Bhakta
机构
[1] Coochbehar Government Engineering College,Department of Computer Science and Engineering
[2] Indian Institute of Information Technology Ranchi,Department of Computer Science and Engineering
来源
关键词
Cyber analytic; Feature selection; Intrusion detection system (IDS); Random forest (RF); Support vector machine (SVM);
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中图分类号
学科分类号
摘要
There exist many intrusion detection systems (IDSs) to provide privacy and security to user data in networks. However, these models are prone to generate high false alarms due to large amounts of noisy data and large feature dimensions. This work aims to achieve a robust IDS by using a hybrid classification model consisting of random forest (RF) and support vector machine (SVM), called RF-SVM. Here, a novel feature optimization technique based on RF has been proposed to optimize the original feature space. Later, SVM is used over the optimized feature space for classification. To test the performance of the proposed model, both scenarios: (i) Anomaly detection and (ii) Signature detection, have been considered. For anomaly detection, binary SVM is used, where the data contain two classes: (i) Normal and (ii) Attack types, whereas, for attack signature detection, multi-class SVM is used to detect each attack type. Simulation results on four standard data sets: (i) NSL-KDD, (ii) ISCX-URL2016, (iii) CICDarknet2020 and (iv) CICDoHBrw2020 demonstrate that the proposed model shows better accuracy and false alarm rate (FAR) compared to other state-of-the-art models.
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页码:471 / 477
页数:6
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