A DNS Tunnel Sliding Window Differential Detection Method Based on Normal Distribution Reasonable Range Filtering
Xin Ma, Shize Guo, Zhisong Pan, Bin Liu, Kaolin Jiang, Ming Chen,, Shijiao Tang

TL;DR
This paper presents a statistical detection method for DNS tunnels using normal distribution analysis of DNS query behaviors, employing a sliding window difference scheme to improve detection rate and practicality without requiring training data.
Contribution
It introduces a novel detection approach based on statistical distribution laws and a sliding window difference scheme, avoiding the need for training datasets.
Findings
Higher detection rate demonstrated in experiments
Method effectively detects unknown DNS tunnels
Does not require dataset construction
Abstract
A covert attack method often used by APT organizations is the DNS tunnel, which is used to pass information by constructing C2 networks. And they often use the method of frequently changing domain names and server IP addresses to evade monitoring, which makes it extremely difficult to detect them. However, they carry DNS tunnel information traffic in normal DNS communication, which inevitably brings anomalies in some statistical characteristics of DNS traffic, so that it would provide security personnel with the opportunity to find them. Based on the above considerations, this paper studies the statistical discovery methodology of typical DNS tunnel high-frequency query behavior. Firstly, we analyze the distribution of the DNS domain name length and times and finds that the DNS domain name length and times follow the normal distribution law. Secondly, based on this distribution law, we…
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Taxonomy
TopicsNetwork Security and Intrusion Detection · Internet Traffic Analysis and Secure E-voting · Network Packet Processing and Optimization
