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A hierarchical classification approach for tor anonymous traffic

机译:匿名流量的分层分类方法

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Tor is an anonymous communication system that can protect our privacy, but it also provides a haven for criminals to avoid network tracing. Therefore, anonymous traffic analysis and classification is an important part of maintaining network security. Existing Tor traffic classification methods require a large number of labeled data, and the classification accuracy rate is not satisfied for practical using. This paper presents a hierarchical classification approach for Tor anonymous traffic. An improved decision tree algorithm (Tor-IDT) is used to identify the Tor anonymous traffic from the mixed traffic, and then the Tri-Training algorithm is used to segment the identified anonymous traffic at the application level. Experiments show that the recognition rate of Tor anonymous traffic is more than 99%, the accuracy of classification can reach 94%, and less labeled data is needed, which proves that this hierarchical classification algorithm has wider applicability and higher classification accuracy.
机译:Tor是一个匿名通信系统,可以保护我们的隐私,但同时也为犯罪分子提供了避风港,避免了网络跟踪。因此,匿名流量分析和分类是维护网络安全的重要组成部分。现有的Tor流量分类方法需要大量的标记数据,分类准确率不能满足实际使用。本文提出了一种针对Tor匿名流量的分层分类方法。改进的决策树算法(Tor-IDT)用于从混合流量中识别出Tor匿名流量,然后使用Tri-Training算法在应用程序级别上对识别出的匿名流量进行分段。实验表明,Tor匿名流量识别率达到99%以上,分类准确率可以达到94%,所需的标签数据更少,证明该分层分类算法具有更广泛的适用性和较高的分类精度。

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