基于流量的统计特征流量检索

Jun Zhang, A. Goscinski
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引用次数: 0

摘要

本文提出了一种基于流量的流量检索技术(flow-based traffic retrieval, FBTR),从大量的网络流量集合中寻找满足信息需求的流量。研究表明,基于流量的流量检索将成为网络管理和安全的有力工具。例如,检索到的流量流可用于帮助分析新的应用程序/协议和检测未知攻击。在基于流的流量检索中,流量由一组流量统计数据(如数据包大小的平均值和包间时间的平均值)组成的向量表示。用户可以提交一个或几个流量,并要求从流量集合中检索“类似”的流量。相似性搜索是基于比较特征空间中的流向量。我们已经做了一些初步的实验来评估基于流的交通检索的性能。结果表明,基于流量的流量检索能够快速准确地找到用户感兴趣的网络流量,甚至是加密流量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Flow-based traffic retrieval using statistical features
This paper proposes a new technique, flow-based traffic retrieval (FBTR), to find traffic flows that satisfy an information need from within large collections of network traffic. It is shown that flow-based traffic retrieval will become a powerful tool in network management and security. For example, the retrieved traffic flows can be used to help analysing new applications/protocols and detecting unknown attacks. In the context of flow-based traffic retrieval, a traffic flow is represented by a vector that consists of a set of flow statistics, such as the average of packet sizes and the average of inter-packet times. The user can submit a traffic flow, or several traffic flows, and ask for “similar” traffic flows to be retrieved from a traffic collection. Similarity search is based on comparing flow vectors in a feature space. We have done some preliminary experiments to evaluate the performance of flow-based traffic retrieval. The results show flow-based traffic retrieval has potential to quickly and accurately find user-interested network traffic, even encrypted traffic.
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