Enhancing Network Intrusion Detection: A Genetic Programming Symbolic Classifier Approach
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- @Article{andelic:2024:Information,
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author = "Nikola Andelic and Sandi {Baressi Segota}",
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title = "Enhancing Network Intrusion Detection: A Genetic
Programming Symbolic Classifier Approach",
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journal = "Information",
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year = "2024",
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volume = "15",
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number = "3",
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pages = "Article No. 154",
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keywords = "genetic algorithms, genetic programming",
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ISSN = "2078-2489",
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URL = "
https://www.mdpi.com/2078-2489/15/3/154",
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DOI = "
doi:10.3390/info15030154",
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abstract = "This investigation underscores the paramount
imperative of discerning network intrusions as a
pivotal measure to fortify digital systems and shield
sensitive data from unauthorized access, manipulation,
and potential compromise. The principal aim of this
study is to leverage a publicly available dataset,
employing a Genetic Programming Symbolic Classifier
(GPSC) to derive symbolic expressions (SEs) endowed
with the capacity for exceedingly precise network
intrusion detection. In order to augment the
classification precision of the SEs, a pioneering
Random Hyperparameter Value Search (RHVS) methodology
was conceptualized and implemented to discern the
optimal combination of GPSC hyperparameter values. The
GPSC underwent training via a robust five-fold
cross-validation regimen, mitigating class imbalances
within the initial dataset through the application of
diverse oversampling techniques, thereby engendering
balanced dataset iterations. Subsequent to the
acquisition of SEs, the identification of the optimal
set ensued, predicated upon metrics inclusive of
accuracy, area under the receiver operating
characteristics curve, precision, recall, and F1-score.
The selected SEs were subsequently subjected to
rigorous testing on the original imbalanced dataset.
The empirical findings of this research underscore the
efficacy of the proposed methodology, with the derived
symbolic expressions attaining an impressive
classification accuracy of 0.9945. If the accuracy
achieved in this research is compared to the average
state-of-the-art accuracy, the accuracy obtained in
this research represents the improvement of
approximately 3.78percent. In summation, this
investigation contributes salient insights into the
efficacious deployment of GPSC and RHVS for the
meticulous detection of network intrusions, thereby
accentuating the potential for the establishment of
resilient cybersecurity defenses.",
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notes = "also known as \cite{info15030154}",
- }
Genetic Programming entries for
Nikola Andelic
Sandi Baressi Segota
Citations