计算机科学
混淆
强化学习
车载自组网
弹道
计算机安全
服务质量
方案(数学)
差别隐私
水准点(测量)
计算机网络
信息隐私
无线自组网
人工智能
无线
数据挖掘
电信
数学
天文
物理
数学分析
大地测量学
地理
作者
Weihang Wang,Minghui Min,Liang Xiao,Ye Chen,Huaiyu Dai
标识
DOI:10.1109/icc.2019.8761415
摘要
Location-based services in vehicular ad hoc networks (VANETs) have to protect user privacy and address the challenge due to the disclosure of the vehicle movement trajectory. In this paper, we propose an reinforcement learning (RL) based differential privacy mechanism that randomizes the released vehicle locations to protect the semantic trajectory of the vehicle and uses RL to select the obfuscation policy. Based on the semantic location of the vehicle and the attack history, this scheme enables a vehicle to optimize the obfuscation policy in terms of the privacy gain and the quality of service loss without being aware of the current attack model in a dynamic privacy protection game. Simulation results show that this scheme can increase the privacy gain, decrease the quality of service loss, and thus improve the utility of the vehicle in comparison with a benchmark scheme.
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