自动网络爬虫作为人类浏览代理的代表性

David Zeber, Sarah Bird, Camila Oliveira, Walter Rudametkin, I. Segall, Fredrik Wollsén, M. Lopatka
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引用次数: 28

摘要

大规模网络爬虫已经成为研究网络特征的最新技术。特别是,它们是在线跟踪研究的核心工具。Web爬行是一种有吸引力的数据收集方法,因为爬行可以以相对较低的基础设施成本运行,并且不需要处理浏览历史等敏感用户数据。然而,使用爬虫作为人类浏览数据的代理所带来的偏见还没有得到很好的研究。爬虫可能无法捕捉到用户环境的多样性,并且一次性爬虫所呈现的Web快照视图不能反映其不断发展的本质,这阻碍了基于爬虫的研究的可重复性。在本文中,我们根据常见的跟踪和指纹指标量化了网络爬虫的可重复性和代表性,同时考虑了爬虫之间的差异以及与人类浏览器使用的差异。我们量化了同时抓取的基线变化,然后隔离了时间、云IP地址与住宅和操作系统的影响。这为评估爬行程序访问高流量网站的标准列表和实际浏览行为之间的一致性提供了基础,这些行为是从超过50,000名Firefox Web浏览器用户的选择样本中测量出来的。我们的分析揭示了处理无状态爬行基础设施和一般有状态人类浏览之间的差异,例如,在从相同域加载页面时,爬行程序往往比人类浏览器用户体验到更高的第三方活动率。
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The Representativeness of Automated Web Crawls as a Surrogate for Human Browsing
Large-scale Web crawls have emerged as the state of the art for studying characteristics of the Web. In particular, they are a core tool for online tracking research. Web crawling is an attractive approach to data collection, as crawls can be run at relatively low infrastructure cost and don’t require handling sensitive user data such as browsing histories. However, the biases introduced by using crawls as a proxy for human browsing data have not been well studied. Crawls may fail to capture the diversity of user environments, and the snapshot view of the Web presented by one-time crawls does not reflect its constantly evolving nature, which hinders reproducibility of crawl-based studies. In this paper, we quantify the repeatability and representativeness of Web crawls in terms of common tracking and fingerprinting metrics, considering both variation across crawls and divergence from human browser usage. We quantify baseline variation of simultaneous crawls, then isolate the effects of time, cloud IP address vs. residential, and operating system. This provides a foundation to assess the agreement between crawls visiting a standard list of high-traffic websites and actual browsing behaviour measured from an opt-in sample of over 50,000 users of the Firefox Web browser. Our analysis reveals differences between the treatment of stateless crawling infrastructure and generally stateful human browsing, showing, for example, that crawlers tend to experience higher rates of third-party activity than human browser users on loading pages from the same domains.
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