Pairing DNS queries and responses in feature extraction raises MLP and Random Forest accuracy above 83% for detecting SSH/SFTP/Telnet tunnels, with roughly 95% reduction in data size.
Entropy-based Prediction of Network Protocols in the Forensic Analysis of DNS Tunnels
1 Pith paper cite this work. Polarity classification is still indexing.
abstract
DNS tunneling techniques are often used for malicious purposes but network security mechanisms have struggled to detect these. Network forensic analysis has thus been used but has proved slow and effort intensive as Network Forensics Analysis Tools struggle to deal with undocumented or new network tunneling techniques. In this paper we present a method to aid forensic analysis through automating the inference of protocols tunneled within DNS tunneling techniques. We analyze the internal packet structure of DNS tunneling techniques and characterize the information entropy of different network protocols and their DNS tunneled equivalents. From this, we present our protocol prediction method that uses entropy distribution averaging. Finally we apply our method on a dataset to measure its performance and show that it has a prediction accuracy of 75%. Our method also preserves privacy as it does not parse the actual tunneled content, rather it only calculates the information entropy.
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cs.CR 1years
2019 1verdicts
UNVERDICTED 1representative citing papers
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Identifying DNS-tunneled traffic with predictive models
Pairing DNS queries and responses in feature extraction raises MLP and Random Forest accuracy above 83% for detecting SSH/SFTP/Telnet tunnels, with roughly 95% reduction in data size.