There is a growing need for spatial privacy considerations in the many geo-spatial technologies that have been created as solutions for COVID-19-related issues. Although effective geo-spatial technologies have already been rolled out, most have significantly sacrificed privacy for utility. In this paper, we explore spatial k-anonymity, a privacy-preserving method that can address this unnecessary tradeoff by providing the best of both privacy and utility. After evaluating its past implications in geo-spatial use cases, we propose applications of spatial k-anonymity in the data sharing and managing of COVID-19 contact tracing technologies as well as heat maps showing a user's travel history. We then justify our propositions by comparing spatial k-anonymity with several other spatial privacy methods, including differential privacy, geo-indistinguishability, and manual consent based redaction. Our hope is to raise awareness of the ever-growing risks associated with spatial privacy and how they can be solved with Spatial K-anonymity.
翻译:许多作为COVID-19相关问题解决方案而创建的地理空间技术越来越需要空间隐私考虑。虽然有效的地理空间技术已经推出,但大多数已经大大牺牲了使用隐私。在本文中,我们探索空间k-匿名性,这是一种保护隐私的方法,可以提供最佳的隐私和实用性,解决这种不必要的权衡。在评估其过去在地理空间使用案例中的影响之后,我们提议在数据共享和管理COVID-19接触跟踪技术以及显示用户旅行史的热图中应用空间k-匿名性。我们然后通过将空间k-匿名性与其他几种空间隐私方法进行比较来论证我们的主张,包括不同的隐私、地理不易和基于人工同意的重写。我们希望提高人们对空间隐私相关风险不断增加和如何用空间K-匿名解决这些风险的认识。