Intelligent model for the detection and classification of encrypted network traffic in cloud infrastructure

Author:

Dawood Muhammad1,Xiao Chunagbai1,Tu Shanshan1,Alotaibi Faiz Abdullah2ORCID,Alnfiai Mrim M.3ORCID,Farhan Muhammad4ORCID

Affiliation:

1. Faculty of Information Technology, Beijing University of Technology, Beijing, China

2. Department of Information Science, College of Humanities and Social Sciences, King Saud University, Riyadh, Saudi Arabia

3. Department of Information Technology, College of Computers and Information Technology, Taif University, Taif, Saudi Arabia

4. School of Science and Engineering, Al Akhawayn University in Ifrane, Ifrane, Morocco

Abstract

This article explores detecting and categorizing network traffic data using machine-learning (ML) methods, specifically focusing on the Domain Name Server (DNS) protocol. DNS has long been susceptible to various security flaws, frequently exploited over time, making DNS abuse a major concern in cybersecurity. Despite advanced attack, tactics employed by attackers to steal data in real-time, ensuring security and privacy for DNS queries and answers remains challenging. The evolving landscape of internet services has allowed attackers to launch cyber-attacks on computer networks. However, implementing Secure Socket Layer (SSL)-encrypted Hyper Text Transfer Protocol (HTTP) transmission, known as HTTPS, has significantly reduced DNS-based assaults. To further enhance security and mitigate threats like man-in-the-middle attacks, the security community has developed the concept of DNS over HTTPS (DoH). DoH aims to combat the eavesdropping and tampering of DNS data during communication. This study employs a ML-based classification approach on a dataset for traffic analysis. The AdaBoost model effectively classified Malicious and Non-DoH traffic, with accuracies of 75% and 73% for DoH traffic. The support vector classification model with a Radial Basis Function (SVC-RBF) achieved a 76% accuracy in classifying between malicious and non-DoH traffic. The quadratic discriminant analysis (QDA) model achieved 99% accuracy in classifying malicious traffic and 98% in classifying non-DoH traffic.

Funder

Beijing Natural Science Foundation

China Ministry of Education—China Mobile Scientific Research Foundation

King Saud University

Publisher

PeerJ

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