Citation
Abdullah, Azizol and Bouke, Mohamed and Udzir, Nur and Samian, Normalia
(2024)
Overcoming the challenges of data lack, leakage, and dimensionality in intrusion detection systems: a comprehensive review.
Journal of Communication and Information Systems (JCIS), 39 (1).
pp. 22-34.
ISSN 1980-6612; eISSN: 1980-6604
Abstract
The Internet of Things (IoT) and cloud computing are rapidly gaining momentum as decentralized Internet-based technologies, leading to increased information in nearly every technical and commercial industry. However, ensuring the security of IoT systems is a pressing issue due to the complexities involved in connected and shared environments. Networks are guarded by Intrusion Detection Systems (IDS) against various cyber threats such as malware, viruses, and unauthorized access. IDS has recently adopted Machine Learning (ML) and Deep Learning (DL) techniques to identify and classify security risks. However, the effective utilization of these technologies depends on the availability, quality, and characteristics of the data used to train models. Moreover, data lack, data leak, and dimensionality (DLLD) are common problems in data science and ML. This paper surveys existing research and suggests solutions for overcoming DLLD-related issues to improve the IDS model.
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