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How Well Do My Results Generalize? Comparing Security and Privacy Survey Results from MTurk, Web, and Telephone Samples

机译:我的结果如何概括?比较来自MTurk,Web和电话样本的安全性和隐私调查结果

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Security and privacy researchers often rely on data collected from Amazon Mechanical Turk (MTurk) to evaluate security tools, to understand users' privacy preferences and to measure online behavior. Yet, little is known about how well Turkers' survey responses and performance on security- and privacy-related tasks generalizes to a broader population. This paper takes a first step toward understanding the generalizability of security and privacy user studies by comparing users' self-reports of their security and privacy knowledge, past experiences, advice sources, and behavior across samples collected using MTurk (n=480), a census-representative web-panel (n=428), and a probabilistic telephone sample (n=3,000) statistically weighted to be accurate within 2.7% of the true prevalence in the U.S. Surprisingly, the results suggest that: (1) MTurk responses regarding security and privacy experiences, advice sources, and knowledge are more representative of the U.S. population than are responses from the census-representative panel; (2) MTurk and general population reports of security and privacy experiences, knowledge, and advice sources are quite similar for respondents who are younger than 50 or who have some college education; and (3) respondents' answers to the survey questions we ask are stable over time and robust to relevant, broadly-reported news events. Further, differences in responses cannot be ameliorated with simple demographic weighting, possibly because MTurk and panel participants have more internet experience compared to their demographic peers. Together, these findings lend tempered support for the generalizability of prior crowdsourced security and privacy user studies; provide context to more accurately interpret the results of such studies; and suggest rich directions for future work to mitigate experience- rather than demographic-related sample biases.
机译:安全和隐私研究人员通常依靠从Amazon Mechanical Turk(MTurk)收集的数据来评估安全工具,了解用户的隐私偏好并评估在线行为。但是,对于Turkers对安全性和隐私相关任务的调查响应和性能如何广泛地推广到更广泛的人群,鲜为人知。本文通过比较使用MTurk(n = 480)收集的样本中用户的安全和隐私知识,过去的经验,建议来源以及行为的自我报告,朝着了解安全性和隐私用户研究的普遍性迈出了第一步。普查代表网络面板(n = 428)和概率电话样本(n = 3,000)经统计学加权后,在美国真实流行率的2.7%范围内是准确的。令人惊讶的是,结果表明:(1)关于MTurk的回应安全和隐私经验,建议来源和知识比人口普查代表小组的答复更能代表美国人口; (2)对于50岁以下或接受过大学教育的受访者,MTurk和有关安全性和隐私经验,知识和建议来源的一般人群报告非常相似; (3)受访者对我们提出的调查问题的回答随着时间的推移是稳定的,并且对相关的,广泛报道的新闻事件具有鲁棒性。此外,不能通过简单的人口统计权重来缓解响应差异,这可能是因为MTurk和小组参与者比其人口统计同龄人拥有更多的互联网经验。总之,这些发现为先前众包的安全性和隐私用户研究的普遍性提供了坚定的支持。提供背景以更准确地解释此类研究的结果;并为今后的工作提供丰富的指导,以减轻经验,而不是减少与人口相关的样本偏见。

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