作者
Shaowei Wang, Liusheng Huang, Yiwen Nie, Xinyuan Zhang, Pengzhan Wang, Hongli Xu, Wei Yang
发表日期
2019/2/12
期刊
IEEE Transactions on Parallel and Distributed Systems
卷号
30
期号
9
页码范围
2046-2059
出版商
IEEE
简介
For the purpose of improving the quality of services, softwares or online services are collecting various of user data, such as personal information and locations. Such data facilitates mining statistical knowledge of users, but threatens users’ privacy as it may reveal sensitive information (e.g., identities and activities) about individuals. This work considers distribution estimation over user-contributed data meanwhile providing rigid protection of their data with local ε-differential privacy (ε-LDP), which sanitizes each user's data on the client's side (e.g, on the user's mobile device). Our privacy protection covers both qualitative data (e.g., categorical data) and discrete quantitative data (e.g., location data). Specifically, for categorical data, we derive an optimal ε-LDP mechanism (termed as k-subset mechanism) from mutual information perspective, and further show its optimality over existing approaches within the context of …
引用总数
201920202021202220232024491620137
学术搜索中的文章
S Wang, L Huang, Y Nie, X Zhang, P Wang, H Xu… - IEEE Transactions on Parallel and Distributed Systems, 2019