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Covert timing channel detection method based on time interval and payload length analysis

机译:基于时间间隔和有效载荷长度分析的隐蔽定时信道检测方法

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摘要

Information leakage is becoming increasingly serious in today's network environment. Faced with increasingly forceful network defence strategies, attackers are also constantly trying to steal important information from systems. As for security researchers, the most troublesome way of information stealing is the covert channel. Generally, the covert channel is divided into the covert storage channel (CSC) and the covert timing channel (CTC). For the covert storage channel, there are already many effective methods to detect it. However, the detection of the covert timing channel is still in the research stage. The basis for implementing the covert timing channel is to control the sending time of packets, so most researches about the covert timing channel detection are based on the time interval between packets. Based on this idea, we refer to the method adopted in the researches of the malicious traffic detection and propose a covert timing channel detection method based on the k-NearestNeighbor (kNN) algorithm. This method uses a series of statistics related to the time interval and payload length as features to train a machine learning model and using 10-fold cross-validation to improve model performance. The experiment result proves that the model has a great detection effect, the detection accuracy is 0.96, and the Area Under Curve (AUC) value the model is 0.9737.
机译:在当今的网络环境中,信息泄漏变得越来越严重。面对越来越强大的网络防御策略,攻击者也不断尝试从系统中窃取重要信息。至于安全研究人员,最麻烦的信息窃取方式是隐蔽渠道。通常,封面信道被分成封面存储信道(CSC)和封面定时信道(CTC)。对于隐蔽存储通道,已经有许多有效的方法来检测它。然而,封面定时信道的检测仍在研究阶段。实现隐蔽定时通道的基础是控制数据包的发送时间,因此大多数关于封面定时信道检测的研究基于分组之间的时间间隔。基于这个想法,我们参考了对恶意交易检测研究采用的方法,并提出了一种基于K-incerceNeighbor(KNN)算法的隐蔽正时通道检测方法。此方法使用与时间间隔和有效载荷长度相关的一系列统计数据作为培训机器学习模型并使用10倍交叉验证来提高模型性能的功能。实验结果证明,该模型具有很大的检测效果,检测精度为0.96,曲线(AUC)值下的面积为0.9737。

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