High Precision Open-World Website Fingerprinting

Tao Wang
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引用次数: 37

Abstract

Traffic analysis attacks to identify which web page a client is browsing, using only her packet metadata — known as website fingerprinting (WF) — has been proven effective in closed-world experiments against privacy technologies like Tor. We want to investigate their usefulness in the real open world. Several WF attacks claim to have high recall and low false positive rate, but they have only been shown to succeed against high base rate pages. We explicitly incorporate the base rate into precision and call it r-precision. Using this metric, we show that the best previous attacks have poor precision when the base rate is realistically low; we study such a scenario (r = 1000), where the maximum r-precision achieved was only 0.14.To improve r-precision, we propose three novel classes of precision optimizers that can be applied to any classifier to increase precision. For r = 1000, our best optimized classifier can achieve a precision of at least 0.86, representing a precision increase by more than 6 times. For the first time, we show a WF classifier that can scale to any open world set size. We also investigate the use of precise classifiers to tackle realistic objectives in website fingerprinting, including different types of websites, identification of sensitive clients, and defeating website fingerprinting defenses.
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高精度开放世界网站指纹识别
流量分析攻击仅利用客户的数据包元数据(即网站指纹(WF))来识别客户正在浏览的网页,这种攻击在针对Tor等隐私技术的封闭世界实验中被证明是有效的。我们想要调查它们在真实的开放世界中的用处。一些WF攻击声称具有高召回率和低误报率,但它们只被证明能够成功攻击高基本率的页面。我们明确地把基本率和精度结合起来,称之为r-精度。使用这个指标,我们发现,当基本率很低时,以前最好的攻击精度很低;我们研究了这样一个场景(r = 1000),其中实现的最大r-precision仅为0.14。为了提高r-precision,我们提出了三种新的精度优化器,它们可以应用于任何分类器以提高精度。当r = 1000时,我们的最佳优化分类器可以达到至少0.86的精度,精度提高了6倍以上。我们首次展示了一个可以扩展到任何开放世界集大小的WF分类器。我们还研究了使用精确分类器来解决网站指纹识别中的现实目标,包括不同类型的网站,敏感客户的识别以及击败网站指纹防御。
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