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Investigating the Streaming Algorithms Usage in Website Fingerprinting Attack Against Tor Privacy Enhancing Technology

机译:研究针对Tor隐私增强技术的网站指纹攻击中流算法的使用

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Website fingerprinting attack is a kind of traffic analysis attack that aims to identify the URL of visited websites using the Tor browser. Previous website fingerprinting attacks were based on batch learning methods which assumed that the traffic traces of each website are independent and generated from the stationary probability distribution. But, in realistic scenarios, the websites' concepts can change over time (dynamic websites) that is known as concept drift. To deal with data whose distribution change over time, the classifier model must update its model permanently and be adaptive to concept drift. Streaming algorithms are dynamic models that have these features and lead us to make a comparison of various representative data stream classification algorithms for website fingerprinting. Given to our experiments and results, by considering streaming algorithms along with statistical flow-based network traffic features, the accuracy grows significantly.
机译:网站指纹攻击是一种流量分析攻击,旨在使用Tor浏览器识别访问的网站的URL。以前的网站指纹攻击是基于批处理学习方法的,该方法假设每个网站的流量跟踪都是独立的,并且是从固定概率分布中生成的。但是,在现实情况下,网站的概念会随着时间(动态网站)而变化,这称为概念漂移。为了处理其分布随时间变化的数据,分类器模型必须永久更新其模型并适应概念漂移。流算法是具有这些功能的动态模型,它使我们对网站指纹的各种代表性数据流分类算法进行了比较。根据我们的实验和结果,通过考虑流算法以及基于统计流的网络流量功能,准确性将大大提高。

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