Efficient Keyword Matching for Deep Packet Inspection based Network Traffic Classification

Pratibha Khandait, N. Hubballi, Bodhisatwa Mazumdar
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引用次数: 14

Abstract

Network traffic classification has a range of applications in network management including QoS and security monitoring. Deep Packet Inspection (DPI) is one of the effective method used for traffic classification. DPI is computationally expensive operation involving string matching between payload and application signatures. Existing traffic classification techniques perform multiple scans of payload to classify the application flows - first scan to extract the words and the second scan to match the words with application signatures. In this paper we propose an approach which can classify network flows with single scan of flow payloads using a heuristic method to achieve a sub-linear search complexity. The idea is to scan few initial bytes of payload and determine potential application signature(s) for subsequent signature matching. We perform experiments with a large dataset containing 171873 network flows and show that it has a good classification accuracy of 98%.
基于深度包检测的高效关键字匹配网络流分类
网络流分类在网络管理中有着广泛的应用,包括QoS和安全监控。深度包检测(DPI)是一种有效的流量分类方法。DPI是一种计算开销很大的操作,涉及到有效负载和应用程序签名之间的字符串匹配。现有的流量分类技术对有效负载执行多次扫描来对应用程序流进行分类——第一次扫描提取单词,第二次扫描将单词与应用程序签名进行匹配。在本文中,我们提出了一种使用启发式方法对网络流进行分类的方法,该方法可以通过单次扫描流有效载荷来实现亚线性搜索复杂度。其思想是扫描有效负载的几个初始字节,并确定后续签名匹配的潜在应用程序签名。我们在包含171873个网络流的大型数据集上进行了实验,结果表明它具有98%的良好分类准确率。
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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