计算机科学
混淆
隐私保护
地理定位
差别隐私
车载自组网
计算机安全
弹道
无线自组网
强化学习
语义安全
方案(数学)
计算机网络
数据挖掘
无线
人工智能
电信
加密
数学
天文
物理
数学分析
万维网
公钥密码术
基于属性的加密
作者
Xin Chen,Tao Zhang,Sheng Shen,Tianqing Zhu,Ping Xiong
标识
DOI:10.1016/j.cose.2021.102446
摘要
The protection of vehicle trajectory in Vehicular ad hoc network is facing many challenges. Among these challenges, one of the most critical issues is to keep the balance between geographical location protection and semantic location protection. Traditional trajectory protection schemes either only focus on geographical location protection or only semantic location protection. Moreover, when trajectory privacy protection is carried out, each location is often given the same protection. This may lead to sensitive locations under insufficient protection and unimportant locations under overprotection. In this paper, based on differential privacy, we propose an optimized privacy differential privacy scheme with reinforcement learning in vehicular ad hoc network. The proposed scheme can dynamically optimize the privacy budget allocation for each location on the vehicle trajectory to reach a better balance between geolocation obfuscation and semantic security. Experiments results demonstrate that the proposed scheme can reduce the risk of geographical and semantic location leakage, and therefore ensure the balance between the utility and privacy.
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