作者
Yulian Mao, Qingqing Ye, Qi Wang, Haibo Hu
发表日期
2023/11/1
期刊
IEEE Transactions on Mobile Computing
期号
01
页码范围
1-13
出版商
IEEE Computer Society
简介
With the prevalence of mobile computing, mobile devices have been generating numerous sensor data, a.k.a., time series. Since these time series may include sensitive information, users are posed with severe privacy risks. To protect individuals' privacy, local differential privacy (LDP) is proposed. However, the added noise satisfying LDP typically degrades the utility of released data, especially for anomaly detection such as healthcare monitoring and hazard alarming. In this paper, we study privacy-preserving time series release with anomalies. Recently, local differential privacy in the temporal setting (TLDP) is proposed to perturb the temporal order rather than the values. While it improves the utility for releasing value-critical data, it still suffers from low utility for anomaly detection, because of the inevitable missing and delayed values incurred by TLDP perturbation. We propose to improve its utility from two aspects …
学术搜索中的文章
Y Mao, Q Ye, Q Wang, H Hu - IEEE Transactions on Mobile Computing, 2023