Lean Privacy Review: Collecting Users’ Privacy Concerns of Data Practices at a Low Cost

Haojian Jin, Hong Shen, Mayank Jain, Swarun Kumar, Jason I. Hong
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引用次数: 4

Abstract

Today, industry practitioners (e.g., data scientists, developers, product managers) rely on formal privacy reviews (a combination of user interviews, privacy risk assessments, etc.) in identifying potential customer acceptance issues with their organization’s data practices. However, this process is slow and expensive, and practitioners often have to make ad-hoc privacy-related decisions with little actual feedback from users. We introduce Lean Privacy Review (LPR), a fast, cheap, and easy-to-access method to help practitioners collect direct feedback from users through the proxy of crowd workers in the early stages of design. LPR takes a proposed data practice, quickly breaks it down into smaller parts, generates a set of questionnaire surveys, solicits users’ opinions, and summarizes those opinions in a compact form for practitioners to use. By doing so, LPR can help uncover the range and magnitude of different privacy concerns actual people have at a small fraction of the cost and wait-time for a formal review. We evaluated LPR using 12 real-world data practices with 240 crowd users and 24 data practitioners. Our results show that (1) the discovery of privacy concerns saturates as the number of evaluators exceeds 14 participants, which takes around 5.5 hours to complete (i.e., latency) and costs 3.7 hours of total crowd work ( $80 in our experiments); and (2) LPR finds 89% of privacy concerns identified by data practitioners as well as 139% additional privacy concerns that practitioners are not aware of, at a 6% estimated false alarm rate.
精益隐私审查:以低成本收集用户对数据实践的隐私关注
今天,行业从业者(例如,数据科学家、开发人员、产品经理)依靠正式的隐私审查(用户访谈、隐私风险评估等的组合)来识别潜在的客户对其组织数据实践的接受问题。然而,这个过程是缓慢和昂贵的,并且从业者经常不得不在很少来自用户的实际反馈的情况下做出与隐私相关的临时决策。我们引入精益隐私审查(Lean Privacy Review, LPR),这是一种快速、廉价、易于获取的方法,可以帮助从业者在设计的早期阶段通过众工的代理来收集用户的直接反馈。LPR采用拟议的数据实践,迅速将其分解为较小的部分,生成一组问卷调查,征求用户意见,并将这些意见总结为紧凑的形式供从业者使用。通过这样做,LPR可以帮助发现人们实际关心的不同隐私问题的范围和程度,而花费的成本和等待正式审查的时间却很少。我们使用240名人群用户和24名数据从业者的12个真实世界数据实践来评估LPR。我们的研究结果表明:(1)当评估者的人数超过14人时,隐私问题的发现饱和,这需要大约5.5小时才能完成(即延迟),并且需要3.7小时的总人群工作(在我们的实验中为80美元);(2) LPR发现89%的隐私问题是由数据从业者确定的,139%的隐私问题是从业者没有意识到的,估计误报率为6%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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