Differential privacy (DP) is getting attention as a privacy definition when publishing statistics of a dataset. This paper focuses on the limitation that DP inevitably causes two-sided error, which is not desirable for epidemic analysis such as how many COVID-19 infected individuals visited location A. For example, consider publishing misinformation that many infected people did not visit location A, which may lead to miss decision-making that expands the epidemic. To fix this issue, we propose a relaxation of DP, called asymmetric differential privacy (ADP). We show that ADP can provide reasonable privacy protection while achieving one-sided error. Finally, we conduct experiments to evaluate the utility of proposed mechanisms for epidemic analysis using a real-world dataset, which shows the practicality of our mechanisms.
翻译:在公布数据集统计数据时,不同隐私(DP)作为一种隐私定义正在引起注意。本文件侧重于DP不可避免地造成双向错误的限制,这对流行病分析来说是不可取的,例如有多少COVID-19受感染者访问A地点。例如,考虑发表错误信息,表明许多受感染者没有访问A地点,这可能导致错过扩大该流行病范围的决策。为了解决这个问题,我们提议放松DP,称为不对称差异隐私(ADP)。我们表明,ADP可以提供合理的隐私保护,同时实现片面错误。最后,我们进行实验,利用真实世界数据集评估拟议的流行病分析机制的效用,该数据集显示了我们机制的实际可行性。