A differentially k-anonymity-based location privacy-preserving for mobile crowdsourcing systems
Author(s) -
Yingjie Wang,
Zhipeng Cai,
Zhongyang Chi,
Xiangrong Tong,
Lijie Li
Publication year - 2018
Publication title -
procedia computer science
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.334
H-Index - 76
ISSN - 1877-0509
DOI - 10.1016/j.procs.2018.03.040
Subject(s) - crowdsourcing , anonymity , computer science , differential privacy , computer security , focus (optics) , information privacy , privacy software , field (mathematics) , privacy protection , location based service , flexibility (engineering) , internet privacy , data mining , world wide web , computer network , physics , mathematics , pure mathematics , optics , statistics
With the rapid development of mobile devices, the problem privacy leaking has become an important research focus in the field of mobile crowdsourcing. In order to guarantee the security and truthfulness of mobile crowdsourcing, this paper proposes a differentially k-anonymity location privacy-preserving for mobile crowdsourcing. Through combining k-anonymity and differential privacy-preserving, the differentially k-anonymity-based location privacy-preserving is proposed in order to prevent workers’ location information from being leaked. Through comparison experiments, the effectiveness, adaptation and flexibility of the proposed differentially k-anonymity-based location privacy-preserving is verified. The differentially k-anonymity-based location privacy-preserving can inspire workers to participate crowd tasks, and protect workers’ location privacy effectively.
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