Sparse Mobile Crowdsensing (MCS) has become a compelling approach to acquire and make inference on urban-scale sensing data. However, participants risk their location privacy when reporting data with their actual sensing positions. To address this issue, we adopt -differential-privacy in Sparse MCS to provide a theoretical guarantee for participants' location privacy regardless of an adversary's prior knowledge. Furthermore, to reduce the data quality loss caused by differential location obfuscation, we propose a privacypreserving framework with three components. First, we learn a data adjustment function to fit the original sensing data to the obfuscated location. Second, we apply a linear program to select an optimal location obfuscation function, which aims to minimize the uncertainty in data adjustment. We also propose a fast approximated variant. Third, we propose an uncertaintyaware inference algorithm to improve the inference accuracy of obfuscated data. Evaluations with real environment and traffic datasets show that our optimal method reduces the data quality loss by up to 42% compared to existing differential privacy methods.
Leye WangDaqing ZhangDingqi YangBrian Y. LimXiaojuan Ma
Qifan YangYuanfang ChenMohsen GuizaniGyu Myoung Lee
Leye WangDaqing ZhangDingqi YangBrian Y. LimXiao HanXiaojuan Ma
Mingchu LiQifan YangXiao ZhengLiqaa Nawaf
Tongqing ZhouZhiping CaiJingshu Su