4.8 Article

Privacy-Aware Data Fusion and Prediction With Spatial-Temporal Context for Smart City Industrial Environment

Journal

IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS
Volume 17, Issue 6, Pages 4159-4167

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TII.2020.3012157

Keywords

Data fusion and prediction; locality-sensitive hashing (LSH); privacy; smart city industrial environment; spatial-temporal context

Funding

  1. National Natural Science Foundation of China [91846301, 61872219]
  2. Natural Science Foundation of Shandong Province [ZR2019MF001]
  3. Open Project of State Key Laboratory for Novel Software Technology [KFKT2020B08]

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Smart cities generate a significant amount of industrial data related to transportation, healthcare, business, and social activities. Protecting user privacy, especially in terms of spatial-temporal context information, is crucial when integrating and analyzing this data. A novel privacy-aware data fusion and prediction approach based on locality-sensitive hashing technique is proposed in this article, showing better prediction performances compared to other methods through real-world dataset experiments.
As one of the cyber-physical-social systems that plays a key role in people's daily activities, a smart city is producing a considerable amount of industrial data associated with transportation, healthcare, business, social activities, and so on. Effectively and efficiently fusing and mining such data from multiple sources can contribute much to the development and improvements of various smart city applications. However, the industrial data collected from the smart city are often sensitive and contain partial user privacy such as spatial-temporal context information. Therefore, it is becoming a necessity to secure user privacy hidden in the smart city data before these data are integrated together for further mining, analyses, and prediction. However, due to the inherent tradeoff between data privacy and data availability, it is often a challenging task to protect users' context privacy while guaranteeing accurate data analysis and prediction results after data fusion. Considering this challenge, a novel privacy-aware data fusion and prediction approach for the smart city industrial environment is put forward in this article, which is based on the classic locality-sensitive hashing technique. At last, our proposal is evaluated by a set of experiments based on a real-world dataset. Experimental results show better prediction performances of our approach compared to other competitive ones.

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