Abstract

High-dimensional crowdsourced data is pervasive in crowdsensing systems and with the development of IoTs it can produce rich knowledge for the society. However, it also creates serious privacy threats for crowdsourcing participants. To mitigate the privacy concerns in crowdsensing systems, local differential privacy has been derived from the de facto standard of differential privacy in order to achieve strong privacy guaranteed in distributed systems. However, directly achieving local differential privacy on high-dimensional crowdsourced data may lead not only to a prohibitive computational burden but also low data utility. Therefore, in this paper, we propose a local private high-dimensional data publication scheme for crowdsensing systems. In particular, on the participants side, high-dimensional records are locally perturbed to protect privacy, while on the servers side, the probability distribution of original data is recovered by taking advantage of both the expectation maximization algorithm and the theory of the Bayesian network. Extensive experiments on real-world datasets demonstrated the effectiveness of the proposed scheme that can synthesize approximate datasets with local differential privacy.

Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call