应用程序特征提取采用动态二进制跟踪和统计学习

Gang Lu, Jing Du, Ronghua Guo, Ying Zhou, Haipeng Fu
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引用次数: 1

摘要

应用特征提取是当前流分类研究的热点,但通过综合分析报文负载、端口分配和流级统计来提取应用特征的研究很少。在本文中,我们将动态二值跟踪和统计学习技术应用于应用特征提取。具体来说,我们首先以自动方式反向调试应用程序,准确捕获有效负载内容,然后递归地将这些内容聚类以生成协议签名。然后进行端口统计分析,生成端口关联规则。为了识别加密的应用程序,我们提出了一种特征选择算法,用于从每个TCP流的前十个数据包大小的时间序列统计中选择最优特征。通过与三种典型特征选择算法的比较,验证了本文提出的特征选择算法的有效性。此外,我们还提出了一种将协议签名、端口关联和流量统计综合应用于流分类的方案。通过对迅雷流识别方法的评价,表明协议签名、端口关联和流量统计相结合的方法在流量分类中是很有前途的。
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Application feature extraction by using both dynamic binary tracking and statistical learning
While application feature extraction is popular in recent researches of traffic classification, only a few studies have extracted application features by synthetically analyzing packet payloads, port allocation and flow-level statistics. In this paper, we apply the techniques of both dynamic binary tracking and statistical learning in application feature extraction. Specifically, we first accurately capture the payload contents by reversely debugging an application in an automatic way, and then recursively cluster those contents to generate protocol signatures. Afterwards, we perform port statistical analysis to generate a port association rule. To identify the encrypted applications, we present a feature selection algorithm for selecting the optimal features from the time series statistics of the first ten packet sizes of each TCP flow. Compared with three typical feature selection algorithms, we validate that our proposed feature selection algorithm is more effectiveness. Additionally, we propose a scheme to synthetically apply protocol signatures, port association and flow statistics in traffic classification. By evaluating our method on the identification of Thunder flows, we show that the combination of protocol signatures, port association and flow statistics is promising in traffic classification.
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