Enhancing IoT Security: A Novel Feature Engineering Approach for ML-Based Intrusion Detection Systems
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- @InProceedings{Mahanipour:2024:DCOSS-IoT,
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author = "Afsaneh Mahanipour and Hana Khamfroush",
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title = "Enhancing {IoT} Security: A Novel Feature Engineering
Approach for {ML-Based} Intrusion Detection Systems",
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booktitle = "2024 20th International Conference on Distributed
Computing in Smart Systems and the Internet of Things
(DCOSS-IoT)",
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year = "2024",
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pages = "548--555",
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month = apr,
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keywords = "genetic algorithms, genetic programming, Cloud
computing, Costs, Accuracy, Sensitivity, Quantum
computing, Image edge detection, System performance,
Binary Quantum-inspired Artificial Bee Colony
Algorithm, Feature Construction, Feature Selection,
Intrusion Detection Systems",
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ISSN = "2325-2944",
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DOI = "
doi:10.1109/DCOSS-IoT61029.2024.00086",
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abstract = "The integration of Internet of Things (IoT)
applications in our daily lives has led to a surge in
data traffic, posing significant security challenges.
IoT applications using cloud and edge computing are at
higher risk of cyberattacks because of the expanded
attack surface from distributed edge and cloud
services, the vulnerability of IoT devices, and
challenges in managing security across interconnected
systems leading to oversights. This led to the rise of
ML-based solutions for intrusion detection systems
(IDSs), which have proven effective in enhancing
network security and defending against diverse threats.
However, ML-based IDS in IoT systems encounters
challenges, particularly from noisy, redundant, and
irrelevant features in varied IoT datasets, potentially
impacting its performance. Therefore, reducing such
features becomes crucial to enhance system performance
and minimise computational costs. This paper focuses on
improving the effectiveness of ML-based IDS at the edge
level by introducing a novel method to find a balanced
trade-off between cost and accuracy through the
creation of informative features in a two-tier
edge-user IoT environment. A hybrid Binary
Quantum-inspired Artificial Bee Colony and Genetic
Programming algorithm is used for this purpose. Three
IoT intrusion detection datasets, namely NSL-KDD,
UNSW-NB15, and BoT-IoT, are used for the evaluation of
the proposed approach. Performance analysis is
conducted using various evaluation metrics such as
accuracy, sensitivity, specificity, and False Positive
Rate (FPR) are employed, while the cost of the IDS
system is assessed based on computational time. The
results are compared with existing methods in the
literature, revealing that the IDS performance can be
enhanced with fewer features, consequently reducing
computational time, through the proposed method. This
offers a better performance-cost trade-off for the IDS
system.",
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notes = "Also known as \cite{10621559}",
- }
Genetic Programming entries for
Afsaneh Mahanipour
Hana Khamfroush
Citations