使用众包市场进行网络测量:欺骗案例

Qasim Lone, M. Luckie, Maciej Korczyński, H. Asghari, M. Javed, M. V. Eeten
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引用次数: 13

摘要

互联网测量工具用于推断互联网上的网络政策和实践,例如审查、流量操纵、带宽和安全措施。有些工具必须从个人网络的有利位置运行,因此依赖于志愿者招募。一小部分志愿者限制了这些工具的影响。众包市场可能会从志愿者库未覆盖的网络中招募工人来运行工具。我们设计了一个基础设施来收集和同步来自五个众包平台的测量数据,并使用该基础设施来收集CAIDA的Spoofer项目的网络源地址验证策略数据。在6周内,我们以2000欧元的价格招募了来自91个国家的1519名员工和784个独特的ASes,从而扩大了Spoofer测量的覆盖范围;其中有342例安全事件以前没有包括在内,比过去12个月增加了15%。我们描述了在招聘和给员工发工资方面的经验教训;特别是,当由于志愿者重叠而对员工进行筛选时,解决员工行为的策略。
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Using Crowdsourcing Marketplaces for Network Measurements: The Case of Spoofer
Internet measurement tools are used to make inferences about network policies and practices across the Internet, such as censorship, traffic manipulation, bandwidth, and security measures. Some tools must be run from vantage points within individual networks, so are dependent on volunteer recruitment. A small pool of volunteers limits the impact of these tools. Crowdsourcing marketplaces can potentially recruit workers to run tools from networks not covered by the volunteer pool. We design an infrastructure to collect and synchronize measurements from five crowdsourcing platforms, and use that infrastructure to collect data on network source address validation policies for CAIDA's Spoofer project. In six weeks we increased the coverage of Spoofer measurements by recruiting 1519 workers from within 91 countries and 784 unique ASes for 2,000 Euro; 342 of these ASes were not previously covered, and represent a 15% increase in ASes over the prior 12 months. We describe lessons learned in recruiting and renumerating workers; in particular, strategies to address worker behavior when workers are screened because of overlap in the volunteer pool.
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