Fingerprinting the Fingerprinters: Learning to Detect Browser Fingerprinting Behaviors

Umar Iqbal, Steven Englehardt, Zubair Shafiq
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引用次数: 74

Abstract

Browser fingerprinting is an invasive and opaque stateless tracking technique. Browser vendors, academics, and standards bodies have long struggled to provide meaningful protections against browser fingerprinting that are both accurate and do not degrade user experience. We propose FP-Inspector, a machine learning based syntactic-semantic approach to accurately detect browser fingerprinting. We show that FP-Inspector performs well, allowing us to detect 26% more fingerprinting scripts than the state-of-the-art. We show that an API-level fingerprinting countermeasure, built upon FP-Inspector, helps reduce website breakage by a factor of 2. We use FP-Inspector to perform a measurement study of browser fingerprinting on top-100K websites. We find that browser fingerprinting is now present on more than 10% of the top-100K websites and over a quarter of the top-10K websites. We also discover previously unreported uses of JavaScript APIs by fingerprinting scripts suggesting that they are looking to exploit APIs in new and unexpected ways.
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指纹识别:学习检测浏览器指纹行为
浏览器指纹识别是一种侵入性的、不透明的无状态跟踪技术。浏览器厂商、学者和标准组织长期以来一直在努力提供有意义的保护,防止浏览器指纹识别,既准确又不降低用户体验。我们提出FP-Inspector,一种基于机器学习的语法-语义方法来准确检测浏览器指纹。我们证明FP-Inspector表现良好,使我们能够比最先进的技术多检测26%的指纹脚本。我们展示了一个api级别的指纹识别对策,建立在FP-Inspector上,有助于减少2个因素的网站破坏。我们使用FP-Inspector对top-100K网站的浏览器指纹进行测量研究。我们发现,超过10%的前10万名网站和超过四分之一的前1万名网站都有浏览器指纹识别功能。我们还通过指纹脚本发现了以前未报道的JavaScript api的使用,这表明他们正在寻找以新的和意想不到的方式利用api。
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