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Title Cpdz: A Credibility-Aware And Privacy-Preserving Data Collection Scheme With Zero-Trust In Next-Generation Crowdsensing Networks
ID_Doc 16444
Authors Tang J.; Fan K.; Yang S.; Liu A.; Xiong N.N.; Herbert Song H.; Leung V.C.M.
Year 2025
Published IEEE Journal on Selected Areas in Communications, 43, 6
DOI http://dx.doi.org/10.1109/JSAC.2025.3560038
Abstract Next-Generation Crowdsensing Networks (NGCNs) have become increasingly critical for smart cities, where data privacy and quality are pivotal concerns. Traditional trust mechanisms in crowdsensing mainly rely on static trust models, which are insufficient for dynamic security requirements. Zero-Trust security represents a promising opportunity, yet coming with notable challenges in NGCNs, including Unknown Workers Online Recruitment (UWOR), Information Elicitation Without Verification (IEWV), Privacy Preserving Data Evaluation (PPDE), and Dynamic Trust Abrupt Shift (DTAS). To address these challenges, we propose a Credibility-aware and Privacy-preserving Data collection scheme with Zero-trust (CPDZ) for secure and quality data collection in NGCNs. First, our CPDZ scheme encompasses a quality worker recruitment strategy with combinatorial multi-armed bandit models, utilizing Thompson Sampling for the secure and efficient resolution of the UWOR. Second, an active dispatching scheme for uncrewed aerial vehicles is crafted to collect data as a gold standard to assist in overcoming the IEWV challenge. Third, as for the PPDE challenge, we propose a lightweight privacy-preserving scheme for dependable truth discovery and secure trust verification. Fourth, the DTAS challenge is managed by a dual verification scheme that integrates short-term and long-term trust assessments, ensuring stability and adaptability of the zero-trust security in our CPDZ scheme. Experiments confirm the superiority of our CPDZ scheme, showing a 12.5% increase in recruitment revenue and a 57.8% reduction in relative error compared to existing approaches © 1983-2012 IEEE.
Author Keywords data privacy; data quality; Next-generation crowdsensing network; worker recruitment; zero-trust


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