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Using GMM and SVM-based Techniques for the Classification of SSH-Encrypted Traffic

机译:基于GMM和基于SVM的技术进行SSH加密流量的分类

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When employing cryptographic tunnels such as the ones provided by Secure Shell (SSH) to protect their privacy on the Internet, users expect two forms of protection. First, they aim at preserving the privacy of their data. Second, they expect that their behavior, e.g., the type of applications they use, also remains private. In this paper we report on two statistical traffic analysis techniques that can be used to break the second type of protection when applied to SSH tunnels, at least under some restricting hypothesis. Experimental results show how current implementations of SSH can be susceptible to this type of analysis, and illustrate the effectiveness of our two classifiers both in terms of their capabilities in analyzing encrypted traffic and in terms of their relative computational complexity.
机译:当使用Cryptographic隧道时,例如由Secure Shell(SSH)提供的那些在互联网上保护他们的隐私,预期两种保护形式。首先,他们旨在保留其数据的隐私。其次,他们期望他们的行为,例如他们使用的应用类型,也仍然是私密的。在本文中,我们报告了两个统计流量分析技术,该技术可用于在应用于SSH隧道时打破第二种保护,至少在一些限制假设下。实验结果表明,SSH的当前实现如何易于这种类型的分析,并说明了我们的两个分类器的有效性,在分析加密的流量以及它们的相对计算复杂性方面,我们的能力也是如此。

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