Personalized Privacy-Preserving Trajectory Data Publishing  被引量:6

Personalized Privacy-Preserving Trajectory Data Publishing

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作  者:LU Qiwei WANG Caimei XIONG Yan XIA Huihua HUANG Wenchao GONG Xudong 

机构地区:[1]School of Computer Science and Technology,University of Science and Technology of China [2]Department of Computer Science and Engineering,Hefei University

出  处:《Chinese Journal of Electronics》2017年第2期285-291,共7页电子学报(英文版)

基  金:supported by the National Natural Science Foundation of China(No.61202404,No.61170233,No.61232018,No.61272472,No.61272317);the Fundamental Research Funds for the Central Universities(No.WK0110000041)

摘  要:Due to the popularity of mobile internet and location-aware devices,there is an explosion of location and tra jectory data of moving objects.A few proposals have been proposed for privacy preserving tra jectory data publishing,and most of them assume the attacks with the same adversarial background knowledge.In practice,different users have different privacy requirements.Such non-personalized privacy assumption does not meet the personalized privacy requirements,meanwhile,it looses the chance to achieve better utility by taking advantage of differences of users' privacy requirements.We study the personalized tra jectory k-anonymity criterion for trajectory data publication.Specifically,we explore and propose an overall framework which provides privacy preserving services based on users' personal privacy requests,including tra jectory clustering,editing and publication.We demonstrate the efficiency and effectiveness of our scheme through experiments on real world dataset.Due to the popularity of mobile internet and location-aware devices,there is an explosion of location and tra jectory data of moving objects.A few proposals have been proposed for privacy preserving tra jectory data publishing,and most of them assume the attacks with the same adversarial background knowledge.In practice,different users have different privacy requirements.Such non-personalized privacy assumption does not meet the personalized privacy requirements,meanwhile,it looses the chance to achieve better utility by taking advantage of differences of users' privacy requirements.We study the personalized tra jectory k-anonymity criterion for trajectory data publication.Specifically,we explore and propose an overall framework which provides privacy preserving services based on users' personal privacy requests,including tra jectory clustering,editing and publication.We demonstrate the efficiency and effectiveness of our scheme through experiments on real world dataset.

关 键 词:Personalization Tra jectory data Privacy-preserving data publishing 

分 类 号:TP309[自动化与计算机技术—计算机系统结构]

 

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