HTTP隧道中的应用分类

Gajen Piraisoody, Changcheng Huang, B. Nandy, N. Seddigh
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引用次数: 6

摘要

准确的流量分类是新兴云和数据中心架构的基本要素。然而,来自云的不同类型的应用程序流量越来越多地通过HTTP进行隧道传输,从而使准确分类成为一项挑战。在HTTP上建立隧道的应用程序范围广泛,性质多样,包括映射、电子邮件、视频、图像、音频和文件。本文提出了一种新的方法来准确有效地对主要类型的HTTP隧道应用进行分类,即视频、音频和文件传输。分类使用的信息只能从基于流的协议(如NetFlow v5)中获得。该方案在一个小型企业网络的实时数据流量中进行了测试,该网络实际混合了常规HTTP和非HTTP流量。将企业网络外包到云端是一种主要的云应用。在测试的场景中,所提出的算法可以准确地对至少70%的HTTP隧道流量进行分类,在某些情况下可以达到90%。与基于NaiveBayes算法和Support-Vector-Machine的方法的结果相比,根据性能度量,该方案的性能优于它们至少10%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of applications in HTTP tunnels
Accurate traffic classification is an essential element of emergent cloud and datacenter architectures. Increasingly, however, different types of application traffic from the cloud are tunnelled over HTTP, thereby making accurate classification a challenge. Applications tunnelled over HTTP are wide in scope and diverse in nature, and include mapping, email, video, image, audio and file. This paper presents a novel approach for the accurate and effective classification of the dominant types of HTTP tunnelled applications, namely video, audio and file-transfer. The classification is carried out using information that is only available from flow-based protocols such as NetFlow v5. The proposed scheme is tested on live data traffic in a small enterprise network with a realistic mixture of regular HTTP and non-HTTP traffic. Outsourcing enterprise networks to cloud is a major cloud application. For the scenarios tested, the proposed algorithm accurately classifies at least 70% of the HTTP tunnelled traffic, and in some cases, up to 90%. In comparison to the results from approaches based on NaiveBayes algorithm and Support-Vector-Machine, the proposed scheme outperforms them by at least 10% as per performance measures.
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