Detecting Cyber Attacks with High-Frequency Features using Machine Learning Algorithms
Yazarlar (2)
Dr. Öğr. Üyesi Ahmet Nusret ÖZALP Kastamonu Üniversitesi, Türkiye
Doç. Dr. Zafer Albayrak Sakarya Uygulamalı Bilimler Üniversitesi, Türkiye
Makale Türü Açık Erişim Özgün Makale (SSCI, AHCI, SCI, SCI-Exp dergilerinde yayınlanan tam makale)
Dergi Adı Acta Polytechnica Hungarica (Q2)
Dergi ISSN 1785-8860 Wos Dergi Scopus Dergi
Dergi Tarandığı Indeksler SCI
Makale Dili Türkçe Basım Tarihi 01-2022
Cilt / Sayı / Sayfa 19 / 7 / 213–233 DOI 10.12700/APH.19.7.2022.7.12
Makale Linki https://doi.org/10.12700/aph.19.7.2022.7.12
UAK Araştırma Alanları
Bilgi Güvenliği ve Kriptoloji Bilgisayar ve İletişim Ağları Siber Güvenlik
Özet
In computer networks, intrusion detection systems are used to detect cyberattacks and anomalies. Feature selection is important for intrusion detection systems to scan the network quickly and accurately. On the other hand, analyzes performed using data with many attributes cause significant resource and time loss. In this study, unlike the literature studies, the frequency effects of the features in the data set are analyzed in detecting cyber-attacks on computer networks. Firstly, the frequencies of the features in the NSL-KDD data set were determined. Then, the effect of high-frequency features in detecting cyber-attacks has been examined with the widely used machine learning algorithms of Random Forest, J48, Naive Bayes, and Multi-Layer Perceptron. The performance of each algorithm is evaluated by considering Precision, False Positive Rate, Accuracy, and True Positive Rate statistics. Detection performances of different types of cyberattacks in the NSL-KDD dataset were analyzed with machine learning algorithms. Precision, Receiver Operator Characteristic, F1 score, recall, and accuracy statistics were chosen as success criteria of machine learning algorithms in attack detection. The results showed that features with high frequency are effective in detecting attacks.
Anahtar Kelimeler
Anomaly detection | Attribute selection | Cyberattacks | IDS | Machine Learning | NSL-KDD
BM Sürdürülebilir Kalkınma Amaçları
Atıf Sayıları
Web of Science 12
Scopus 22
Google Scholar 34
Detecting Cyber Attacks with High-Frequency Features using Machine Learning Algorithms

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