Performance Analysis and Feature Selection for Network-Based Intrusion Detection With Deep Learning
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Date
Authors
Caner, Serhat
Erdoğmuş, Nesli
Erten, Yusuf Murat
Journal Title
Journal ISSN
Volume Title
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Open Access Color
GOLD
Green Open Access
No
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Publicly Funded
No
Abstract
An intrusion detection system is an automated monitoring tool that analyzes network traffic and detects malicious activities by looking out either for known patterns of attacks or for an anomaly. In this study, intrusion detection and classification performances of different deep learning based systems are examined. For this purpose, 24 deep neural networks with four different architectures are trained and evaluated on CICIDS2017 dataset. Furthermore, the best performing model is utilized to inspect raw network traffic features and rank them with respect to their contributions to success rates. By selecting features with respect to their ranks, sets of varying size from 3 to 77 are assessed in terms of classification accuracy and time efficiency. The results show that recurrent neural networks with a certain level of complexity can achieve comparable success rates with state-of-the-art systems using a small feature set of size 9; while the average time required to classify a test sample is halved compared to the complete set.
Description
Keywords
Deep learning, Feature selection, Network intrusion detection, Recurrent Neural Networks
Fields of Science
Citation
WoS Q
Scopus Q

OpenCitations Citation Count
1
Volume
30
Issue
3
Start Page
629
End Page
643
PlumX Metrics
Citations
Scopus : 1
Captures
Mendeley Readers : 11
SCOPUS™ Citations
1
checked on Apr 30, 2026
Page Views
1183
checked on Apr 30, 2026
Downloads
511
checked on Apr 30, 2026
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