期刊文献+

Privacy Quantification Model Based on the Bayes Conditional Risk in Location-Based Services 被引量:6

Privacy Quantification Model Based on the Bayes Conditional Risk in Location-Based Services
原文传递
导出
摘要 The widespread use of Location-Based Services (LBSs), which allows untrusted service providers to collect large quantities of information regarding users' locations, has raised serious privacy concerns. In response to these issues, a variety of LBS Privacy Protection Mechanisms (LPPMs) have been recently proposed. However, evaluating these LPPMs remains problematic because of the absence of a generic adversarial model for most existing privacy metrics. In particular, the relationships between these metrics have not been examined in depth under a common adversarial model, leading to a possible selection of the inappropriate metric, which runs the risk of wrongly evaluating LPPMs. In this paper, we address these issues by proposing a privacy quantification model, which is based on Bayes conditional privacy, to specify a general adversarial model. This model employs a general definition of conditional privacy regarding the adversary's estimation error to compare the different LBS privacy metrics. Moreover, we present a theoretical analysis for specifying how to connect our metric with other popular LBS privacy metrics. We show that our privacy quantification model permits interpretation and comparison of various popular LBS privacy metrics under a common perspective. Our results contribute to a better understanding of how privacy properties can be measured, as well as to the better selection of the most appropriate metric for any given LBS application. The widespread use of Location-Based Services (LBSs), which allows untrusted service providers to collect large quantities of information regarding users' locations, has raised serious privacy concerns. In response to these issues, a variety of LBS Privacy Protection Mechanisms (LPPMs) have been recently proposed. However, evaluating these LPPMs remains problematic because of the absence of a generic adversarial model for most existing privacy metrics. In particular, the relationships between these metrics have not been examined in depth under a common adversarial model, leading to a possible selection of the inappropriate metric, which runs the risk of wrongly evaluating LPPMs. In this paper, we address these issues by proposing a privacy quantification model, which is based on Bayes conditional privacy, to specify a general adversarial model. This model employs a general definition of conditional privacy regarding the adversary's estimation error to compare the different LBS privacy metrics. Moreover, we present a theoretical analysis for specifying how to connect our metric with other popular LBS privacy metrics. We show that our privacy quantification model permits interpretation and comparison of various popular LBS privacy metrics under a common perspective. Our results contribute to a better understanding of how privacy properties can be measured, as well as to the better selection of the most appropriate metric for any given LBS application.
出处 《Tsinghua Science and Technology》 SCIE EI CAS 2014年第5期452-462,共11页 清华大学学报(自然科学版(英文版)
基金 supported in part by the National Science and Technology Major Project (No. 2012ZX03002001004) the National Natural Science Foundation of China (Nos. 61172090, 61163009, and 61163010) the PhD Programs Foundation of Ministry of Education of China (No. 20120201110013) the Scientific and Technological Project in Shaanxi Province (Nos. 2012K06-30 and 2014JQ8322)
关键词 location-based services Bayes decision estimator privacy metric adversarial mode location-based services Bayes decision estimator privacy metric adversarial mode
  • 相关文献

参考文献1

二级参考文献12

  • 1PAN Xiao,XU Jiarliang,MENG Xiaofeng. Protection location privacy against location-dependent attacks in mobile services[J].{H}IEEE Transactions on Knowledge and Data Engineering,2012,(8):1506-1519.
  • 2XU T,CAI Ying. Exploring historical location data for anonymity preservation in location-based services[A].Piscataway,NJ,USA:IEEE,2008.1220-1228.
  • 3PING A,ZHANG Nan,FU Xinwen. Protection of query privacy for continuous location based services[A].Piscataway,NJ,USA:IEEE,2011.1710-1718.
  • 4SHOKRI R,THEODORAKOPOULOS G,TRON-COSO C. Protecting location privacy:optimal strategy against localization attacks[A].New York,USA:ACM,2012.617-626.
  • 5GRUTESER M,GRUNWALD D. Anonymous usage of location-based services through spatial and temporal cloaking[A].New York,USA:ACM,2003.31-42.
  • 6SHOKRI R,TRONCOSO C,DIAZ C. Unraveling an old cloak:k-anonymity for location privacy[A].New York,USA:ACM,2012.115-118.
  • 7SHOKRI R,FREUDIGER J,JADLIWALA M. A distortion-based metric for location privacy[A].New York,USA:ACM,2009.21-30.
  • 8SHOKRI R,THEODORAKOPOUS G,BOUDEC J-Y L. Quantifying location privacy[A].Piscataway,NJ,USA:IEEE,2011.247-262.
  • 9CHEN Xihui,PANG Jun. Measuring query privacy in location-based services[A].New York,USA:ACM,2012.49-60.
  • 10SHIN H,ATLURI V,VAIDYA J. A profile anonymization model for privacy in a personalized location base service environment[A].Piscataway,NJ,USA:IEEE,2008.73-80.

共引文献10

同被引文献27

引证文献6

二级引证文献20

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部