Reinforcement Learning-Based Voting for Feature Drift-Aware Intrusion Detection: An Incremental Learning Framework
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- @Article{Shyaa:2025:ACCESS,
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author = "Methaq A. Shyaa and Noor Farizah Ibrahim and
Zurinahni Binti Zainol and Rosni Abdullah and Mohammed Anbar",
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title = "Reinforcement Learning-Based Voting for Feature
Drift-Aware Intrusion Detection: An Incremental
Learning Framework",
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journal = "IEEE Access",
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year = "2025",
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volume = "13",
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pages = "37872--37903",
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keywords = "genetic algorithms, genetic programming, Feature
extraction, Heuristic algorithms, Accuracy, Intrusion
detection, Adaptation models, Faces, Classification
algorithms, Tuning, Sensitivity, Reinforcement
learning, feature drift, concept drift, stream data
classification, dynamic feature selection",
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ISSN = "2169-3536",
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DOI = "
doi:10.1109/ACCESS.2025.3544221",
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abstract = "In Intrusion Detection Systems (IDS), stream data
classification faces significant challenges due to
concept drifts and feature evolution, where traditional
methods struggle to maintain accuracy over time. One
critical challenge is feature drift, which refers to
changes in the relevance of features over time,
directly impacting the model's classification accuracy.
This paper introduces the Incremental Feature
Drift-Aware Genetic Programming Combiner (IFDA-GPC),
which integrates a Voting Enhanced Deep Q-Network
Multi-Agent Feature Selection (VE-DQN-MAFS) mechanism
to address these challenges. The framework extends the
existing IGPC architecture by incorporating dynamic
feature selection and employing a multi-agent system
with voting-based aggregation. This approach enhances
feature selection decisions, especially in cases where
agents provide conflicting assessments of feature
relevance. By reconciling these variations, the
framework ensures consistency and reliability in
real-time classification tasks. The framework was
evaluated using benchmark datasets, including KDD Cup
'99, CICIDS-2017, HIKARI-2021, and ISCX2012, under both
evolving and non-evolving scenarios. Results
demonstrate that GPC-KOS-DFS, derived from IFDA-GPC,
significantly outperformed existing methods in
accuracy, F1-score, recall, and AUC metrics. Notably,
it achieved an accuracy of 93percent on the CICIDS-2017
dataset, showcasing its effectiveness in handling
feature drifts while maintaining high classification
performance. These findings establish IFDA-GPC as a
robust solution for managing evolving data streams in
intrusion detection systems.",
-
notes = "Also known as \cite{10896652}",
- }
Genetic Programming entries for
Methaq A Shyaa
Noor Farizah Ibrahim
Zurinahni Binti Zainol
Rosni Abdullah
Mohammed Anbar
Citations