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Big Data Privacy Preserving in Multi-Access Edge Computing for Heterogeneous Internet of Things | IEEE Journals & Magazine | IEEE Xplore

Big Data Privacy Preserving in Multi-Access Edge Computing for Heterogeneous Internet of Things


Abstract:

With the popularity of smart devices, multi-access edge computing (MEC) has become the mainstream of dealing with big data in heterogeneous Internet of Things (H-IoT). ME...Show More

Abstract:

With the popularity of smart devices, multi-access edge computing (MEC) has become the mainstream of dealing with big data in heterogeneous Internet of Things (H-IoT). MEC makes full use of the computing power of edge nodes, which greatly reduces the computing pressure of data centers, and brings great convenience to the storage and processing of big data. However, it is easy to become the object of hacker attacks due to the lack of centralized management of distributed nodes. Once these nodes are compromised, a series of privacy issues can happen. In this article, we first overview the architecture of MEC for H-IoT. The MEC covers three-level advanced functional entities, including moblie edge (ME) system-level, ME host-level and ME network- level. Second, we draw our attention to the privacy issues in the MEC, especially in data aggregation and data mining. In addition, we consider machine learning privacy preserving as a case study in the application of MEC. Simulation results are shown to reveal the feasibility of the proposed method. Finally, we propose open issues for future work.
Published in: IEEE Communications Magazine ( Volume: 56, Issue: 8, August 2018)
Page(s): 62 - 67
Date of Publication: 14 August 2018

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