Visible to the public A Hybrid Location Privacy Protection Scheme in Big Data Environment

TitleA Hybrid Location Privacy Protection Scheme in Big Data Environment
Publication TypeConference Paper
Year of Publication2017
AuthorsNosouhi, M. R., Pham, V. V. H., Yu, S., Xiang, Y., Warren, M.
Conference NameGLOBECOM 2017 - 2017 IEEE Global Communications Conference
Date Publisheddec
KeywordsBig Data, big data privacy, Correlation, cryptography, data privacy, human factors, Metrics, Mobile radio mobility management, policy, privacy, pubcrawl, Resiliency, Scalability, Spatiotemporal phenomena
Abstract

Location privacy has become a significant challenge of big data. Particularly, by the advantage of big data handling tools availability, huge location data can be managed and processed easily by an adversary to obtain user private information from Location-Based Services (LBS). So far, many methods have been proposed to preserve user location privacy for these services. Among them, dummy-based methods have various advantages in terms of implementation and low computation costs. However, they suffer from the spatiotemporal correlation issue when users submit consecutive requests. To solve this problem, a practical hybrid location privacy protection scheme is presented in this paper. The proposed method filters out the correlated fake location data (dummies) before submissions. Therefore, the adversary can not identify the user's real location. Evaluations and experiments show that our proposed filtering technique significantly improves the performance of existing dummy-based methods and enables them to effectively protect the user's location privacy in the environment of big data.

URLhttp://ieeexplore.ieee.org/document/8254987/
DOI10.1109/GLOCOM.2017.8254987
Citation Keynosouhi_hybrid_2017