Rethinking Encrypted Traffic Classification: A Multi-Attribute Associated Fingerprint Approach

Yige Chen, Tianning Zang, Yongzheng Zhang, Yuan Zhou, Yipeng Wang
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引用次数: 22

Abstract

With the unprecedented prevalence of mobile network applications, cryptographic protocols, such as the Secure Socket Layer/Transport Layer Security (SSL/TLS), are widely used in mobile network applications for communication security. The proven methods for encrypted video stream classification or encrypted protocol detection are unsuitable for the SSL/TLS traffic. Consequently, application-level traffic classification based networking and security services are facing severe challenges in effectiveness. Existing encrypted traffic classification methods exhibit unsatisfying accuracy for applications with similar state characteristics. In this paper, we propose a multiple-attribute-based encrypted traffic classification system named Multi-Attribute Associated Fingerprints (MAAF). We develop MAAF based on the two key insights that the DNS traces generated during the application runtime contain classification guidance information and that the handshake certificates in the encrypted flows can provide classification clues. Apart from the exploitation of key insights, MAAF employs the context of the encrypted traffic to overcome the attribute-lacking problem during the classification. Our experimental results demonstrate that MAAF achieves 98.69% accuracy on the real-world traceset that consists of 16 applications, supports the early prediction, and is robust to the scale of the training traceset. Besides, MAAF is superior to the state-of-the-art methods in terms of both accuracy and robustness.
重新思考加密流量分类:一种多属性关联指纹方法
随着移动网络应用的空前普及,安全套接字层/传输层安全协议(SSL/TLS)等加密协议被广泛应用于移动网络应用中,以保证通信安全。现有的加密视频流分类或加密协议检测方法不适用于SSL/TLS流量。因此,基于应用层流分类的网络和安全服务的有效性面临着严峻的挑战。现有的加密流分类方法对具有相似状态特征的应用程序的分类精度不理想。本文提出了一种基于多属性的加密流分类系统——多属性关联指纹(MAAF)。我们基于两个关键见解开发MAAF:在应用程序运行时期间生成的DNS跟踪包含分类指导信息,以及加密流中的握手证书可以提供分类线索。除了利用关键洞察之外,MAAF还利用加密流量的上下文来克服分类过程中缺乏属性的问题。我们的实验结果表明,MAAF在包含16个应用程序的真实跟踪集上达到98.69%的准确率,支持早期预测,并且对训练跟踪集的规模具有鲁棒性。此外,MAAF在准确性和鲁棒性方面都优于最先进的方法。
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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