论文标题

嘈杂的数字暴露通知中的隐私准确性权衡

Privacy-accuracy trade-offs in noisy digital exposure notifications

论文作者

Hammoud, Abbas, Yu, Yun William

论文摘要

自从Covid-19的全球蔓延开始淹没政府进行手动接触追踪的企图以来,人们对利用手机的力量通过开发曝光通知应用程序来自动化接触过程。大概的想法很简单:使用蓝牙或其他数据交换技术记录用户之间的联系,使用户能够报告积极的诊断,并提醒您接触过病用户的用户。当然,与此想法有关的隐私问题很多。该领域的大部分工作都与设计追踪联系人的设计机制有关,并提醒用户,这些用户不会泄露有关用户的其他信息,而不是曝光事件的存在。但是,尽管设计实用协议至关重要,但必须意识到,通知用户有关曝光事件的通知本身可能会泄露机密信息(例如,已经诊断出特定的联系人)。幸运的是,虽然数字接触跟踪是一项相对较新的任务,但几十年来一直研究了隐私和数据披露的通用问题。确实,差异隐私的框架进一步允许通过添加随机噪声来实现可证明的查询隐私。在本文中,我们将统计隐私和社会建议算法的两个结果转化为暴露通知。因此,我们证明,如果要通过注入噪声使曝光通知框架更加私密,则必须牺牲准确性的程度上一些天真的界限。

Since the global spread of Covid-19 began to overwhelm the attempts of governments to conduct manual contact-tracing, there has been much interest in using the power of mobile phones to automate the contact-tracing process through the development of exposure notification applications. The rough idea is simple: use Bluetooth or other data-exchange technologies to record contacts between users, enable users to report positive diagnoses, and alert users who have been exposed to sick users. Of course, there are many privacy concerns associated with this idea. Much of the work in this area has been concerned with designing mechanisms for tracing contacts and alerting users that do not leak additional information about users beyond the existence of exposure events. However, although designing practical protocols is of crucial importance, it is essential to realize that notifying users about exposure events may itself leak confidential information (e.g. that a particular contact has been diagnosed). Luckily, while digital contact tracing is a relatively new task, the generic problem of privacy and data disclosure has been studied for decades. Indeed, the framework of differential privacy further permits provable query privacy by adding random noise. In this article, we translate two results from statistical privacy and social recommendation algorithms to exposure notification. We thus prove some naive bounds on the degree to which accuracy must be sacrificed if exposure notification frameworks are to be made more private through the injection of noise.

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