隐私政策的大规模可读性分析

Benjamin Fabian, Tatiana Ermakova, Tino Lentz
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引用次数: 83

摘要

在线隐私政策通知网站用户他们的个人信息是如何收集、处理和存储的。在日益关注隐私的背景下,隐私政策似乎是提高客户信任和忠诚度的一种有影响力的工具。然而,在实践中,消费者似乎只有在极少数情况下才会真正阅读隐私政策,这可能反映了一种普遍的假设,即政策很难理解。通过设计和实现一个包含多种已建立的可读性措施的自动提取和可读性分析工具集,我们提出了第一个大规模研究,该研究提供了近50,000个流行英语网站隐私政策可读性的当前经验证据。研究结果从经验上证实,平均而言,当前的隐私政策仍然难以阅读。此外,该研究为可读性研究提供了新的理论见解,特别是在实际可读性度量之间的关联程度。具体来说,它显示了几个已建立的可读性指标的冗余性,如SMOG、RIX、LIX、GFI、FKG、ARI和FRES,从而简化了未来的选择过程和可读性研究之间的比较,并呼吁对可读性测量框架进行研究。此外,本文还提供了一个更完善的隐私策略提取器和分析器,以及一个可靠的策略文本语料库,供进一步研究使用。
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Large-scale readability analysis of privacy policies
Online privacy policies notify users of a Website how their personal information is collected, processed and stored. Against the background of rising privacy concerns, privacy policies seem to represent an influential instrument for increasing customer trust and loyalty. However, in practice, consumers seem to actually read privacy policies only in rare cases, possibly reflecting the common assumption stating that policies are hard to comprehend. By designing and implementing an automated extraction and readability analysis toolset that embodies a diversity of established readability measures, we present the first large-scale study that provides current empirical evidence on the readability of nearly 50,000 privacy policies of popular English-speaking Websites. The results empirically confirm that on average, current privacy policies are still hard to read. Furthermore, this study presents new theoretical insights for readability research, in particular, to what extent practical readability measures are correlated. Specifically, it shows the redundancy of several well-established readability metrics such as SMOG, RIX, LIX, GFI, FKG, ARI, and FRES, thus easing future choice making processes and comparisons between readability studies, as well as calling for research towards a readability measures framework. Moreover, a more sophisticated privacy policy extractor and analyzer as well as a solid policy text corpus for further research are provided.
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