Araştırma Makalesi

AutoGluon-Based Performance Analysis for Multi-Class Network Attack Detection

Cilt: 13 Sayı: 2 24 Aralık 2025
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AutoGluon-Based Performance Analysis for Multi-Class Network Attack Detection

Öz

The increasing complexity and critical nature of cyber threats have heightened the importance of effective attack detection systems. In this study, various machine learning algorithms (SVM, KNN, Logistic Regression, Random Forest, XGBoost), deep learning models (CNN, LSTM, DNN), and the AutoML-based AutoGluon framework are systematically compared for multi-class network attack detection. The experiments utilize the UNSW-NB15 dataset. Due to the imbalanced class distribution in the dataset, class balancing was applied in certain analyses using the SMOTE technique. All models were evaluated using commonly adopted classification metrics, including Accuracy, Precision, Recall, F1-score, and ROC-AUC. The findings indicate that AutoGluon achieved the highest performance, owing to its automated modeling and ensemble-based approach. These results suggest that automated modeling techniques may offer greater competitiveness and effectiveness compared to traditional methods. By systematically analyzing the performance of different modeling strategies in intrusion detection systems, this study aims to provide guidance for the development of future security solutions.

Anahtar Kelimeler

Kaynakça

  1. [1] Nour, M., Slay, J. UNSW-NB15: a comprehensive data set for network intrusion detection systems (UNSW-NB15 network data set). 2015 Military Communications and Information Systems Conference (MilCIS), IEEE, 2015.
  2. [2] Chawla, N. V., Bowyer, K. W., Hall, L. O., Kegelmeyer, W. P. SMOTE: Synthetic Minority Over-sampling Technique, Journal of Artificial Intelligence Research, 16, 321–357, 2002.
  3. [3] Fernández, A., García, S., Herrera, F., Chawla, N. V. SMOTE for learning from imbalanced data: progress and challenges, marking the 15-year anniversary. Journal of Artificial Intelligence Research. 61(1): 863–905, 2018.
  4. [4] Türkyılmaz, Y., Şentürk, A. Saldırı tespitinde makine öğrenmesi yöntemlerinin performans analizi. Avrupa Bilim ve Teknoloji Dergisi, (32), 107–112, 2021.
  5. [5] Şimşek, M. M., Atılgan, E. DoS and DDoS Attacks on Internet of Things and Their Detection by Machine Learning Algorithms. European Journal of Science and Technology, 32, 107–112, 2021.
  6. [6] Kurt Pehlivanoğlu, M., Kuyucu, A., Kaya, R., & Aydın, R. IoT Veri Kümelerinde Makine Öğrenmesine Dayalı Saldırı Tespiti. Avrupa Bilim ve Teknoloji Dergisi, 52, 19–26, 2023.
  7. [7] Ata, O., Kadhim, K. Network Intrusion Detection Using Machine Learning Techniques. Aurum Journal of Engineering Systems and Architecture, 2(1), 115–123, 2018.
  8. [8] Amarouche, S., Küçük, K. Machine and deep learning-based intrusion detection and comparison in Internet of Things. Journal of Naval Sciences and Engineering, 18(2), 333–361, 2022.

Ayrıntılar

Birincil Dil

İngilizce

Konular

Bilgi Güvenliği Yönetimi

Bölüm

Araştırma Makalesi

Erken Görünüm Tarihi

24 Aralık 2025

Yayımlanma Tarihi

24 Aralık 2025

Gönderilme Tarihi

29 Temmuz 2025

Kabul Tarihi

11 Eylül 2025

Yayımlandığı Sayı

Yıl 2025 Cilt: 13 Sayı: 2

Kaynak Göster

APA
Kocagöz, S., Yücalar, F., Borandag, E., & Şahinaslan, E. (2025). AutoGluon-Based Performance Analysis for Multi-Class Network Attack Detection. Mus Alparslan University Journal of Science, 13(2), 341-350. https://doi.org/10.18586/msufbd.1753107
AMA
1.Kocagöz S, Yücalar F, Borandag E, Şahinaslan E. AutoGluon-Based Performance Analysis for Multi-Class Network Attack Detection. MAUN Fen Bil. Dergi. 2025;13(2):341-350. doi:10.18586/msufbd.1753107
Chicago
Kocagöz, Sinan, Fatih Yücalar, Emin Borandag, ve Ender Şahinaslan. 2025. “AutoGluon-Based Performance Analysis for Multi-Class Network Attack Detection”. Mus Alparslan University Journal of Science 13 (2): 341-50. https://doi.org/10.18586/msufbd.1753107.
EndNote
Kocagöz S, Yücalar F, Borandag E, Şahinaslan E (01 Aralık 2025) AutoGluon-Based Performance Analysis for Multi-Class Network Attack Detection. Mus Alparslan University Journal of Science 13 2 341–350.
IEEE
[1]S. Kocagöz, F. Yücalar, E. Borandag, ve E. Şahinaslan, “AutoGluon-Based Performance Analysis for Multi-Class Network Attack Detection”, MAUN Fen Bil. Dergi., c. 13, sy 2, ss. 341–350, Ara. 2025, doi: 10.18586/msufbd.1753107.
ISNAD
Kocagöz, Sinan - Yücalar, Fatih - Borandag, Emin - Şahinaslan, Ender. “AutoGluon-Based Performance Analysis for Multi-Class Network Attack Detection”. Mus Alparslan University Journal of Science 13/2 (01 Aralık 2025): 341-350. https://doi.org/10.18586/msufbd.1753107.
JAMA
1.Kocagöz S, Yücalar F, Borandag E, Şahinaslan E. AutoGluon-Based Performance Analysis for Multi-Class Network Attack Detection. MAUN Fen Bil. Dergi. 2025;13:341–350.
MLA
Kocagöz, Sinan, vd. “AutoGluon-Based Performance Analysis for Multi-Class Network Attack Detection”. Mus Alparslan University Journal of Science, c. 13, sy 2, Aralık 2025, ss. 341-50, doi:10.18586/msufbd.1753107.
Vancouver
1.Sinan Kocagöz, Fatih Yücalar, Emin Borandag, Ender Şahinaslan. AutoGluon-Based Performance Analysis for Multi-Class Network Attack Detection. MAUN Fen Bil. Dergi. 01 Aralık 2025;13(2):341-50. doi:10.18586/msufbd.1753107