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A Lightweight Software Model for Signature-Based Application-Level Traffic Classification System

机译:基于签名的应用级流量分类系统的轻量级软件模型

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摘要

Internet traffic classification is an essential step for stable service provision. The payload signature classifier is considered a reliable method for Internet traffic classification but is prohibitively computationally expensive for real-time handling of large amounts of traffic on high-speed networks. In this paper, we describe several design techniques to minimize the search space of traffic classification and improve the processing speed of the payload signature classifier. Our suggestions are (1) selective matching algorithms based on signature type, (2) signature reorganization using hierarchical structure and traffic locality, and (3) early packet sampling in flow. Each can be applied individually, or in any combination in sequence. The feasibility of our selections is proved via experimental evaluation on traffic traces of our campus and a commercial ISP. We observe 2 to 5 times improvement in processing speed against the untuned classification system and Snort Engine, while maintaining the same level of accuracy.
机译:互联网流量分类是稳定提供服务的重要步骤。有效负载签名分类器被认为是用于Internet流量分类的可靠方法,但对于高速网络上实时处理大量流量而言,其计算量过高。在本文中,我们描述了几种设计技术,以最小化流量分类的搜索空间并提高有效载荷签名分类器的处理速度。我们的建议是(1)基于签名类型的选择性匹配算法;(2)使用分层结构和流量局部性进行签名重组;以及(3)流中的早期数据包采样。每种都可以单独应用,也可以按顺序组合使用。通过对我们校园和商业ISP的流量跟踪进行实验评估,证明了我们选择的可行性。我们观察到与未调整的分类系统和Snort引擎相比,处理速度提高了2至5倍,同时保持了相同的准确性。

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