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Fine-Grained Geo-Obfuscation to Protect Workers’ Location Privacy in Time-Sensitive Spatial Crowdsourcing
Qiu, Chenxi1; Yadav, Sourabh1; Ji, Yuede1; Squicciarini, Anna2; Dantu, Ram1; Zhao, Juanjuan3; Xu, Cheng Zhong4
2024-03-18
Conference Name27th International Conference on Extending Database Technology, EDBT 2024
Source PublicationAdvances in Database Technology - EDBT
Volume27
Issue3
Pages373-385
Conference Date25-28 March 2024
Conference PlacePaestum, Italy
CountryItaly
PublisherOpenProceedings.org
Abstract

Geo-obfuscation is a location privacy protection mechanism used by mobile users to conceal their precise locations when reporting location data, and it has been widely used to protect the location privacy of workers in spatial crowdsourcing (SC). However, this technique introduces inaccuracies in the reported locations, raising the question of how to control the quality loss that results from obfuscation in SC services. Prior studies have addressed this issue in time-insensitive SC settings, where some degree of quality degradation can be accepted and the locations can be expressed with less precision, which, however, is inadequate for time-sensitive SC.

In this paper, we aim to minimize the quality loss caused by geo-obfuscation in time-sensitive SC applications. To this end, we model workers’ mobility on a fine-grained location field and constrain each worker’s obfuscation range to a set of peer locations, which have similar traveling costs to the destination as the actual location. We apply a linear programming (LP) framework to minimize the quality loss while satisfying both peer location constraints and geo-indistinguishability, a location privacy criterion extended from differential privacy. By leveraging the constraint features of the formulated LP, we enhance the time efficiency of solving LP through the geo-indistinguishability constraint reduction and the column generation algorithm. Using both simulation and real-world experiments, we demonstrate that our approach can reduce the quality loss of SC applications while protecting workers’ location privacy.

DOI10.48786/edbt.2024.33
URLView the original
Language英語English
Scopus ID2-s2.0-85190957330
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Document TypeConference paper
CollectionFaculty of Science and Technology
DEPARTMENT OF COMPUTER AND INFORMATION SCIENCE
Affiliation1.University of North Texas, Denton, United States
2.Pennsylvania State University, University Park, United States
3.Shenzhen Institute of Advanced Technology, Shenzhen, Guangdong, China
4.University of Macau, Guangdong, Macao
Recommended Citation
GB/T 7714
Qiu, Chenxi,Yadav, Sourabh,Ji, Yuede,et al. Fine-Grained Geo-Obfuscation to Protect Workers’ Location Privacy in Time-Sensitive Spatial Crowdsourcing[C]:OpenProceedings.org, 2024, 373-385.
APA Qiu, Chenxi., Yadav, Sourabh., Ji, Yuede., Squicciarini, Anna., Dantu, Ram., Zhao, Juanjuan., & Xu, Cheng Zhong (2024). Fine-Grained Geo-Obfuscation to Protect Workers’ Location Privacy in Time-Sensitive Spatial Crowdsourcing. Advances in Database Technology - EDBT, 27(3), 373-385.
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