MOHAMED S ALYAHYA, Husam Lahza and Rayan Mosli
Adv. Artif. Intell. Mach. Learn., 4 (3):2764-2782
MOHAMED S ALYAHYA : King Abdulaziz University
Husam Lahza : King Abdulaziz University
Rayan Mosli : King Abdulaziz University
DOI: https://dx.doi.org/10.54364/AAIML.2024.43161
Article History: Received on: 03-Jul-24, Accepted on: 23-Sep-24, Published on: 30-Sep-24
Corresponding Author: MOHAMED S ALYAHYA
Email: alyahya.mhmd4@gmail.com
Citation: MOHAMED S ALYAHYA, Husam Lahza, Rayan Mosli. (2024). Toward Reducing IDS Misclassification Using Hybrid DL and ML Approach. Adv. Artif. Intell. Mach. Learn., 4 (3 ):2764-2782
Operation centers often face challenges due to the high rate of misclassifications caused by the lower precision in
Intrusion Detection System (IDS) models. Despite several research contributions ranging from machine learning and deep learning
techniques aiming to reduce false positives and negatives, researchers and security experts consistently encounter a trade-off
between these two types of errors. This indicates a significant opportunity for further contributions in this field. We propose a hybrid
model that combines Recurrent Neural Networks (RNN) feature extraction capabilities with Support Vector Machines (SVM)
classification abilities. Our model achieves an impressive accuracy rate of 98.2% and significantly reduces misclassification errors
compared to contemporary state-of-the-art models. This work shows the potential of hybrid approaches in improving accuracy and
reducing false positive and negative errors.