Detecting DNS Tunnel through Binary-Classification Based on Behavior Features

Jingkun Liu, Shuhao Li, Yongzheng Zhang, Jun Xiao, Peng Chang, Chengwei Peng
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引用次数: 34

Abstract

DNS tunnel is a typical Internet covert channel used by attackers or bots to evade the malicious activities detection. The stolen information is encoded and encapsulated into the DNS packets to transfer. Since DNS traffic is common, most of the firewalls directly allow it to pass and IDS does not trigger an alarm with it. The popular signature-based detection methods and threshold-based methods are not flexible and make high false alarms. The approaches based on characters distribution features also do not perform well, because attackers can modify the encoding method to disturb the characters distributions.In this paper, we propose an effective and applicable DNS tunnel detection mechanism. The prototype system is deployed at the Recursive DNS for tunnel identification. We use four kinds of features including time-interval features, request packet size features, record type features and subdomain entropy features. We evaluate the performance of our proposal with Support Vector Machine, Decision Tree and Logistical Regression. The experiments show that the method can achieve high detection accuracy of 99.96%.
基于行为特征的二进制分类检测DNS隧道
DNS隧道是攻击者或机器人用来逃避恶意活动检测的典型的Internet隐蔽通道。被窃取的信息被编码并封装到DNS数据包中进行传输。由于DNS流量很常见,大多数防火墙直接允许它通过,IDS不会触发它的警报。目前流行的基于签名的检测方法和基于阈值的检测方法存在灵活性差、虚警率高的问题。基于字符分布特征的方法也表现不佳,因为攻击者可以修改编码方法来干扰字符分布。本文提出了一种有效且适用的DNS隧道检测机制。原型系统部署在递归DNS上,用于隧道识别。我们使用了四种特征,包括时间间隔特征、请求包大小特征、记录类型特征和子域熵特征。我们使用支持向量机、决策树和逻辑回归来评估我们的提案的性能。实验表明,该方法可以达到99.96%的检测准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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