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Central Tendency Feature Selection (CTFS): a novel approach for efficient and effective feature selection in intrusion detection systems


Citation

Bouke, Mohamed Aly and Abdullah, Azizol and Udzir, Nur Izura and Samian, Normalia (2025) Central Tendency Feature Selection (CTFS): a novel approach for efficient and effective feature selection in intrusion detection systems. Multimedia Tools and Applications, 84 (34). pp. 42627-42648. ISSN 1380-7501; eISSN: 1573-7721

Abstract

In the digital era, the escalation of data generation and cyber threats has heightened the importance of network security. Machine Learning-based Intrusion Detection Systems (IDS) play a crucial role in combating these threats, yet there is a significant gap in their feature selection methodologies. These traditional methods often fail to handle large datasets, leading to performance limitations efficiently. To advance this crucial aspect of IDS, we propose the novel Central Tendency-Based Feature Selection (CTFS) method. Our empirical investigation, utilizing the widely acknowledged UNSWNB15 and NSLKDD cybersecurity datasets, reveals that CTFS not only outperforms established feature selection methods like Univariate Selection, Recursive Feature Elimination (RFE), Principal Component Analysis (PCA), and Gini Index in terms of accuracy, achieving up to 95%, and recall, reaching up to 99%, but it also substantially enhances execution efficiency. Specifically, CTFS demonstrates a remarkable reduction in feature selection time to approximately 0.1 s for UNSWNB15 and 0.026 s for NSLKDD, outmatching the more time-intensive RFE, which recorded 569.7 s and 24.9 s, respectively. These findings showcase CTFS as a potent solution, balancing high performance with computational efficiency, a key consideration in time-sensitive security applications.


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Additional Metadata

Item Type: Article
Subject: Software
Subject: Media Technology
Divisions: Faculty of Computer Science and Information Technology
DOI Number: https://doi.org/10.1007/s11042-025-20837-8
Publisher: Springer
Keywords: Binary classification; Central Tendency-Based Feature Selection (CTFS); Feature selection methods; Intrusion Detection Systems (IDS); Machine learning in cybersecurity
Depositing User: Ms. Zaimah Saiful Yazan
Date Deposited: 11 Mar 2026 02:34
Last Modified: 11 Mar 2026 02:34
Altmetrics: http://www.altmetric.com/details.php?domain=psasir.upm.edu.my&doi=10.1007/s11042-025-20837-8
URI: http://psasir.upm.edu.my/id/eprint/122296
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