Araştırma Makalesi

FastTrafficAnalyzer: An Efficient Method for Intrusion Detection Systems to Analyze Network Traffic

Cilt: 12 Sayı: 4 29 Eylül 2021
  • Recep Sinan Arslan
PDF İndir
EN

FastTrafficAnalyzer: An Efficient Method for Intrusion Detection Systems to Analyze Network Traffic

Abstract

Network intrusion detection systems are software or devices used to detect malignant attackers in modern internet networks. The success of these systems depends on the performance of the algorithm and method used to catch attacks and the time it takes for it. Due to the continuous internet traffic, these systems are expected to detect attacks in real time. In this study, using a proposed pre-processing, internet traffic data becomes more easily processable and traffic is classified by network analysis with machine learning techniques. In this way, the traffic analysis time was significantly shortened and a high level of success was achieved. The proposed model has been tested in the CSE-CIC-IDS2018 dataset and its advantaged verified. Experimental results i) 99.0% detection rate was achieved in the ExtraTree algorithm for binary classification, while a reduction of 82.96% was achieved in the processing time per sample; ii) For multiclass (15 class) detection, 98.5% detection rate was achieved with the Random Forest algorithm, while a 64.43% shortening was achieved in the processing time per sample. As a result, similar classification rate with the studies in the literature has been achieved with much shorter test time.

Keywords

Kaynakça

  1. [1] McKinney Wes, “Data structures for statistical computing in Python”, Proceedings of the 9th python in science conference, 1-6, 2010.
  2. [2] Pedregosa F, Varoquaux G., Gramfort A., Michel V., Thirion B., Grisel O, et al., “Scikit-learn: machine learning in Python”, Journal of Machine Learning Research 12, 2825-2830, 2011.
  3. [3] Chen T., Guestrin C., “Xgboost: a scalable tree boosting system”, Proceedings of the 22nd ACM SIGKDD International conference on Knowledge Discovery and Data Mining, 785-794, August, 2016.
  4. [4] CyberEdge, 2021. 2021 Cyberthreat Defense Report. https://cyber-edge.com/cdr/
  5. [5] FireEye, 2021. M-trends 2021Cyber Security Report. FireEye, https://www.fireeye.com/blog/threat-research/2021/04/m-trends-2021-a-view-from-the-front-lines.html
  6. [6] Liao H-J, Richard Lin C-H, Lin Y-C, Tung K. “Intrusion detection system: A comprehensive review”, Journal of Network and Computer Applications, 36(1), 16-24, 2013.
  7. [7] Sunanda Gamage, Jagath Samarabandu, “Deep learning methods in network intrusion detection: a survey and an objective comparison”, Journal of Network and Computer Applications, 169, 1-21, 2020.
  8. [8] Ansam Khraisat, Ammar Alazab, “A critical review of intrusion detection systems in the internet of things: techniques, deployment strategy, validation strategy, attacks, public datasets and challenges”, Cybersecurity, 4(18), 1-27, 2021.

Ayrıntılar

Birincil Dil

İngilizce

Konular

-

Bölüm

Araştırma Makalesi

Yazarlar

Recep Sinan Arslan Bu kişi benim
0000-0002-3028-0416
Türkiye

Yayımlanma Tarihi

29 Eylül 2021

Gönderilme Tarihi

9 Mayıs 2021

Kabul Tarihi

7 Eylül 2021

Yayımlandığı Sayı

Yıl 2021 Cilt: 12 Sayı: 4

Kaynak Göster

IEEE
[1]R. S. Arslan, “FastTrafficAnalyzer: An Efficient Method for Intrusion Detection Systems to Analyze Network Traffic”, DÜMF MD, c. 12, sy 4, ss. 565–572, Eyl. 2021, doi: 10.24012/dumf.1001881.

Cited By

DUJE tarafından yayınlanan tüm makaleler, Creative Commons Atıf 4.0 Uluslararası Lisansı ile lisanslanmıştır. Bu, orijinal eser ve kaynağın uygun şekilde belirtilmesi koşuluyla, herkesin eseri kopyalamasına, yeniden dağıtmasına, yeniden düzenlemesine, iletmesine ve uyarlamasına izin verir. 24456