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HSLF: HTTP Header Sequence Based LSH Fingerprints for Application Traffic Classification

机译:HSLF:基于HTTP标头序列的LSH指纹,用于应用程序流量分类

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Distinguishing the prosperous network application is a challenging task in network management that has been extensively studied for many years. Unfortunately, previous work on HTTP traffic classification rely heavily on prior knowledge with coarse grained thus are limited in detecting the evolution of new emerging application and network behaviors. In this paper, we propose HSLF, a hierarchical system that employs application fingerprint to classify HTTP traffic. Specifically, we employ local-sensitive hashing algorithm to obtain the importance of each field in HTTP header, from which a rational weight allocation scheme and fingerprint of each HTTP session are generated. Then, similarities of fingerprints among each application axe calculated to classify the unknown HTTP traffic. Performance on a real-world dataset of HSLF achieves an accuracy of 96.6%, which outperforms classic machine learning methods and state-of-the-art models.
机译:区分繁荣网络应用是在网络管理中的一个具有挑战性的任务,这些任务是广泛研究多年。 遗憾的是,以前在HTTP流量分类上依赖于HTTP流量分类的工作严重依赖于具有粗粒的先验知识,因此受到了检测新兴应用和网络行为的演变。 在本文中,我们提出了HSLF,该分层系统采用了应用指纹来分类HTTP流量。 具体地,我们采用局部敏感的散列算法来获得HTTP报头中的每个字段的重要性,从中生成每个HTTP会话的Rational权重分配方案和指纹。 然后,计算每个应用程序AX中的指纹的相似性以对未知的HTTP流量进行分类。 HSLF实际数据集的性能实现了96.6%的准确性,这优于经典机器学习方法和最先进的模型。

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