通过精确的端到端测量来理解全球审查的做法

Lin Jin, Shuai Hao, Haining Wang, Chase Cotton
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引用次数: 5

摘要

进行大规模的互联网审查测量是具有挑战性的,因为它涉及通过人为请求触发审查,并从相应的响应中识别异常。由于对合法服务的预期响应缺乏真实的基础,以前的研究通常需要大量的、不可扩展的人工检查来识别假阳性,同时仍然没有检测到假阴性。在本文中,我们提出了伪装者,这是一个新颖的框架,使端到端测量能够准确地检测审查活动并显示审查部署,而无需人工努力。伪装者的核心是一个控制服务器,它使用静态有效负载进行应答,以提供服务器响应的真实情况。因此,我们从世界各地的各种有利位置向我们的控制服务器发送请求,如果有利位置收到不同的响应,则可以识别审查活动。特别是,我们设计并执行了一个缓存测试,以预先排除可能被网络路径上的缓存代理干扰的有利位置。然后,我们对控制服务器执行应用程序跟踪路由,以探索审查器的行为及其部署。通过伪装,我们从177个国家的有利位置进行了5800万次测量。我们观察到在122个国家内阻止DNS, HTTP或HTTPS请求的29.2万个审查活动,实现了10^-6的误报率和零误报率。此外,伪装者揭示了13个国家的审查部署。
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Understanding the Practices of Global Censorship through Accurate, End-to-End Measurements
It is challenging to conduct a large scale Internet censorship measurement, as it involves triggering censors through artificial requests and identifying abnormalities from corresponding responses. Due to the lack of ground truth on the expected responses from legitimate services, previous studies typically require a heavy, unscalable manual inspection to identify false positives while still leaving false negatives undetected. In this paper, we propose Disguiser, a novel framework that enables end-to-end measurement to accurately detect the censorship activities and reveal the censor deployment without manual efforts. The core of Disguiser is a control server that replies with a static payload to provide the ground truth of server responses. As such, we send requests from various types of vantage points across the world to our control server, and the censorship activities can be recognized if a vantage point receives a different response. In particular, we design and conduct a cache test to pre-exclude the vantage points that could be interfered by cache proxies along the network path. Then we perform application traceroute towards our control server to explore censors' behaviors and their deployment. With Disguiser, we conduct 58 million measurements from vantage points in 177 countries. We observe 292 thousand censorship activities that block DNS, HTTP, or HTTPS requests inside 122 countries, achieving a 10^-6 false positive rate and zero false negative rate. Furthermore, Disguiser reveals the censor deployment in 13 countries.
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