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Hybrid and lightweight detection of third party tracking: Design, implementation, and evaluation

机译:混合和轻量级的第三方跟踪检测:设计,实施和评估

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A common practice for websites is to rely on services provided by third party sites to track users and provide personalized experiences. Unfortunately, this practice has strong implications for both users and performance. From one hand, the privacy of individuals is at a risk given the use of valuable information used for the reconstruction of personal profiles. From the other hand, many existing countermeasures to protect privacy, having been implemented into Web browsers, exhibit performance issues, mainly due to the use of huge (and difficult to maintain up to date) lists of resources that have to be filtered out, given their privacy intrusiveness.To overcome these limitations, we propose the use of a hybrid mechanism exploiting blacklisting and machine learning for the automatic identification of privacy intrusive services requested while browsing Web pages. The idea is to use the blacklisting technique (widely used by the majority of privacy tools), in combination with a machine learning model which distinguishes between malicious and functional resources, and hence updates the blacklist, accordingly. We found out that machine learning models are able to classify JavaScript programs and HTTP requests with accuracy up to 91% and 97%, respectively.We provided a prototype implementation of this hybrid mechanism, named GuardOne, and we performed an exhaustive evaluation study to assess its effectiveness and performance. Results showed that GuardOne is able to filter out malicious resources from users' requests without performance degradation when compared with traditional systems that leverage on the use of static lists for filtering. Moreover, results about effectiveness show that our mechanism, even with some small improvements, is able to efficiently filter out malicious requests and reduce in a substantial way personal information leakage. (C) 2019 Elsevier B.V. All rights reserved.
机译:网站的常见做法是依靠第三方网站提供的服务来跟踪用户并提供个性化的体验。不幸的是,这种做法对用户和性能都有很大的影响。一方面,鉴于使用了用于重建个人资料的宝贵信息,个人的隐私受到了威胁。另一方面,已在Web浏览器中实施的许多保护隐私的现有对策都存在性能问题,这主要是由于使用了必须过滤掉的庞大(且难以维护)资源列表,给定为了克服这些限制,我们建议使用一种利用黑名单和机器学习的混合机制来自动识别浏览网页时请求的隐私侵入服务。想法是将黑名单技术(大多数隐私工具广泛使用)与机器学习模型结合使用,该模型可区分恶意资源和功能资源,从而相应地更新黑名单。我们发现机器学习模型能够对JavaScript程序和HTTP请求进行分类,准确率分别高达91%和97%。我们提供了这种混合机制的原型实现,名为GuardOne,并且进行了详尽的评估研究以评估其有效性和性能。结果表明,与利用静态列表进行过滤的传统系统相比,GuardOne能够从用户的请求中过滤出恶意资源而不会降低性能。此外,关于有效性的结果表明,即使有一些小的改进,我们的机制也能够有效过滤掉恶意请求,并从实质上减少个人信息的泄漏。 (C)2019 Elsevier B.V.保留所有权利。

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