4.8 Article

Anonymous Privacy-Preserving Task Matching in Crowdsourcing

Journal

IEEE INTERNET OF THINGS JOURNAL
Volume 5, Issue 4, Pages 3068-3078

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JIOT.2018.2830784

Keywords

Anonymity; crowdsourcing; privacy; revocation; task matching; traceability

Funding

  1. Research Grants Council of Hong Kong [GRF CityU 11208917, CRF CityU C1008-16G]
  2. NSF China [61732022, 61702105]

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With the development of sharing economy, crowdsourcing as a distributed computing paradigm has become increasingly pervasive. As one of indispensable services for most crowdsourcing applications, task matching has also been extensively explored. However, privacy issues are usually ignored during the task matching and few existing privacy-preserving crowdsourcing mechanisms can simultaneously protect both task privacy and worker privacy. This paper systematically analyzes the privacy leaks and potential threats in the task matching and proposes a single-keyword task matching scheme for the multirequester/multiworker crowdsourcing with efficient worker revocation. The proposed scheme not only protects data confidentiality and identity anonymity against the crowd-server, but also achieves query traceability against dishonest or revoked workers. Detailed privacy analysis and thorough performance evaluation show that the proposed scheme is secure and feasible.

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