An Application Traffic Classification Method Based on Semi-Supervised Clustering

B. Liu, Hao Tu
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引用次数: 10

Abstract

Accurate traffic classification is critical in network security monitoring and traffic engineering. To overcome the deficiencies of traditional traffic classification methods with port mapping and signature matching, several machine learning techniques were proposed. However, there are two main challenges for classifying network traffic using machine learning method. Firstly, labeled samples are scarce and difficult to obtain. Secondly, not all types of applications are known a priori, and new ones may appear over time. To address the above-mentioned problems, This paper proposed a semi-supervised classification method that allows classifier to be designed from training dataset consisting of a few labeled and many unlabeled samples. This method consist two steps: Particle Swarm Optimization (PSO) clustering algorithm was employed to partition a training dataset that mixed few labeled samples with abundant unlabeled samples. Then, available labeled samples were used to map the clusters to the application classes. Two host features: IP Address Discreteness and Success Rate of Connections had been proposed and used in this paper. Experimental results using traffic from campus backbone show that high classification accuracy can be achieved with a few labeled samples.
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基于半监督聚类的应用流量分类方法
准确的流量分类在网络安全监控和流量工程中至关重要。为了克服传统基于端口映射和签名匹配的流量分类方法的不足,提出了几种机器学习技术。然而,使用机器学习方法对网络流量进行分类存在两个主要挑战。首先,标记样品稀缺,难以获得。其次,并非所有类型的应用程序都是先验已知的,随着时间的推移可能会出现新的应用程序。针对上述问题,本文提出了一种半监督分类方法,该方法允许从由少量标记样本和许多未标记样本组成的训练数据集中设计分类器。该方法分为两个步骤:首先,采用粒子群优化(Particle Swarm Optimization, PSO)聚类算法对带有少量标记样本和大量未标记样本的训练数据集进行划分;然后,使用可用的标记样本将集群映射到应用程序类。本文提出并应用了IP地址离散性和连接成功率这两个主机特性。利用校园主干网流量进行的实验结果表明,使用少量的标记样本可以达到较高的分类精度。
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