Performance Evaluation of Supervised Machine Learning Based Intrusion Detection with Univariate Feature Selection on NSL KDD Dataset

Author:

Walling Supongmen1,Lodh Sibesh1

Affiliation:

1. National Institute of Technology Nagaland

Abstract

Abstract In order to provide exceptional security in networks and secure sensitive and private data, an efficient technique for detecting intrusions is critical nowadays. Due to the rapid expansion of Internet and network technology use, which also accorded to an escalation in the number of attacks, IDS are currently of more interest to researchers. Network intrusion detection (NID) is used to identify network invasions, which is essential for assuring the security of the Internet of Things (IoT) and have become a quintessential element in nearly any security infrastructure. Lately, machine learning algorithms have been used to offer prospective IDS solutions. Intrusion detection is carried out by SVM, kNN, Decision Tree and Logistic Regression using trained attack patterns. Simulation results demonstrate the competence of the proposed detection system to recognize anomalies and sound an alarm. Additionally, feature selection should be incorporated as a preprocessing step to reduce big datasets and enhance accuracy and system performance. In this study, we present an IDS model with feature selection based on univariate selection that works in conjunction with ML based classifiers such as decision tree, SVM, kNN and logistic regression. Using the NSL-KDD data set, we exemplify how our model can outperform conventional ML classifiers in terms of detection rate, precision, recall.

Publisher

Research Square Platform LLC

Reference34 articles.

1. Granjal, J., Monteiro, E., Sá Silva, J.: "Security for the Internet of Things: A Survey of Existing Protocols and Open Research Issues," in IEEE Communications Surveys & Tutorials, vol. 17, no. 3, pp. 1294–1312, thirdquarter 2015

2. Gendreau, AA., Moorman, M.: Survey of intrusion detection systems towards an end to end secure internet of things. In: 2016 IEEE 4th International Conference on Future Internet of Things and Cloud (FiCloud). IEEE, Vienna. pp 84–90

3. Intrusion detection systems for IoT-based smart environments: a survey;Elrawy M;J Cloud Comp,2018

4. Building an Efficient Intrusion Detection System Based on Feature Selection and Ensemble Classifier;Zhou Y;Computer Networks,2020

5. Gül, A., Adali, E.: "A feature selection algorithm for IDS," In: 2017 International Conference on Computer Science and Engineering (UBMK), 2017, 816–820,

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