计算机科学
差别隐私
对抗制
图形
隐私政策
私人信息检索
隐私保护
信息隐私
理论计算机科学
计算机安全
数据挖掘
人工智能
作者
Yang Cao,Yonghui Xiao,Shun Takagi,Li Xiong,Masatoshi Yoshikawa,Yilin Shen,Jinfei Liu,Hongxia Jin,Xiaofeng Xu
出处
期刊:Cornell University - arXiv
日期:2020-01-01
被引量:3
标识
DOI:10.48550/arxiv.2005.01263
摘要
Location privacy has been extensively studied in the literature. However, existing location privacy models are either not rigorous or not customizable, which limits the trade-off between privacy and utility in many real-world applications. To address this issue, we propose a new location privacy notion called PGLP, i.e., \textit{Policy Graph based Location Privacy}, providing a rich interface to release private locations with customizable and rigorous privacy guarantee. First, we design the privacy metrics of PGLP by extending differential privacy. Specifically, we formalize a user's location privacy requirements using a \textit{location policy graph}, which is expressive and customizable. Second, we investigate how to satisfy an arbitrarily given location policy graph under adversarial knowledge. We find that a location policy graph may not always be viable and may suffer \textit{location exposure} when the attacker knows the user's mobility pattern. We propose efficient methods to detect location exposure and repair the policy graph with optimal utility. Third, we design a private location trace release framework that pipelines the detection of location exposure, policy graph repair, and private trajectory release with customizable and rigorous location privacy. Finally, we conduct experiments on real-world datasets to verify the effectiveness of the privacy-utility trade-off and the efficiency of the proposed algorithms.
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