Can We Detect Malicious Behaviours in Encrypted DNS Tunnels Using Network Flow Entropy?

Authors

  • Yulduz Khodjaeva Faculty of Computer Science, Dalhousie University, Canada
  • Nur Zincir-Heywood Faculty of Computer Science, Dalhousie University, Canada
  • Ibrahim Zincir Faculty of Engineering, Izmir University of Economics, Turkey

DOI:

https://doi.org/10.13052/jcsm2245-1439.1135

Keywords:

DNS over HTTPS, Entropy, Cybersecurity, Machine Learning, tunnelling atacks

Abstract

This paper explores the concept of entropy of a flow to augment flow statistical features for encrypted DNS tunnelling detection, specifically DNS over HTTPS traffic. To achieve this, the use of flow exporters, namely Argus, DoHlyzer and Tranalyzer2 are studied. Statistical flow features automatically generated by the aforementioned tools are then augmented with the flow entropy. In this work, flow entropy is calculated using three different techniques: (i) entropy over all packets of a flow, (ii) entropy over the first 96 bytes of a flow, and (iii) entropy over the first n-packets of a flow. These features are provided as input to ML classifiers to detect malicious behaviours over four publicly available datasets. This model is optimized using TPOT-AutoML system, where the Random Forest classifier provided the best performance achieving an average F-measure of 98% over all testing datasets employed.

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Author Biographies

Yulduz Khodjaeva, Faculty of Computer Science, Dalhousie University, Canada

Yulduz Khodjaeva has recently received her Master of Computer Science degree from Dalhousie University, Canada. During her studies, she carried out research in the cybersecurity area, particularly the detection of malicious behaviours in DNS tunnels. She published her conference paper at ARES 2021: the 16th International Conference on Availability, Reliability and Security. Currently, Yulduz is working as a Software Developer at EY Canada.

Nur Zincir-Heywood, Faculty of Computer Science, Dalhousie University, Canada

Nur Zincir-Heywood is a University Research Professor of Computer Science at Dalhousie University. Her research interests include machine learning for cyber security, and network/service operations and management. She serves as an Associate Editor of the IEEE Transactions on Network and Service Management and Wiley International Journal of Network Management. She also promotes information communication technologies to wider audiences as a tech columnist for CBC Information Morning and a Board Member on CS-Can/INFO-Can.

Ibrahim Zincir, Faculty of Engineering, Izmir University of Economics, Turkey

Ibrahim Zincir is an Assistant Professor in the Department of Software Engineering at Izmir University of Economics. Dr. Zincir received his Ph.D. in Computer Engineering from Plymouth University with a focus on data mining for secure mobile networks. He is a member of the IEEE and regularly promotes software engineering to a wider audience through several media outlets. His research interests include data mining, machine learning, mobile networks and web centric business applications.

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Published

2022-08-14

How to Cite

1.
Khodjaeva Y, Zincir-Heywood N, Zincir I. Can We Detect Malicious Behaviours in Encrypted DNS Tunnels Using Network Flow Entropy?. JCSANDM [Internet]. 2022 Aug. 14 [cited 2024 Dec. 12];11(03):461-96. Available from: https://journals.riverpublishers.com/index.php/JCSANDM/article/view/14789

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Section

Extended Workshop Papers