Evaluation of Feature Selection Techniques in Intrusion Detection Systems Using Machine Learning Models in Wireless Ad Hoc Networks: The Role of Deep Learning

Nagalakshmi, T.J. and Balasaraswathi, M. and Sivasankaran, V. and Ravikumar, D. and Joseph Gladwin, S. and Pravin Kumar, S. (2021) Evaluation of Feature Selection Techniques in Intrusion Detection Systems Using Machine Learning Models in Wireless Ad Hoc Networks: The Role of Deep Learning. In: Sensor Data Analysis and Management. Wiley, pp. 33-72. ISBN 9781119682806

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Abstract

To better understand existing intrusion detection systems (IDSs) and the techniques adopted to develop an effective system, this chapter presents an exhaustive literature review. It elucidates the framework used in the present research work to detect wormhole attacks in WANs. The chapter also discusses the simulation environment used to build the IDS. It analyzes the relationships between the features in the network layer, and thereby presents the influence of feature selection in the IDS. Two machine learning models are used for feature selection, namely, random forest method and PCA method. The chapter demonstrates the model developed for intrusion detection using one-class SVM technique. It is concluded that the IDSs designed using PCA + K-means cluster classifier IDS is very effective in the detection of wormhole attacks, whereas PCA + one-class SVM IDS is good in the detection of wormhole attacks in WANs.

Item Type: Book Section
Subjects: Electronics and Communication Engineering > Computer Network
Divisions: Electronics and Communication Engineering
Depositing User: Mr IR Admin
Date Deposited: 24 Sep 2024 09:00
Last Modified: 24 Sep 2024 09:00
URI: https://ir.vistas.ac.in/id/eprint/7022

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