Privacy-Enhanced and Multifunctional Health Data Aggregation under Differential Privacy Guarantees

نویسندگان

  • Hao Ren
  • Hongwei Li
  • Xiaohui Liang
  • Shibo He
  • Yuan-Shun Dai
  • Lian Zhao
چکیده

With the rapid growth of the health data scale, the limited storage and computation resources of wireless body area sensor networks (WBANs) is becoming a barrier to their development. Therefore, outsourcing the encrypted health data to the cloud has been an appealing strategy. However, date aggregation will become difficult. Some recently-proposed schemes try to address this problem. However, there are still some functions and privacy issues that are not discussed. In this paper, we propose a privacy-enhanced and multifunctional health data aggregation scheme (PMHA-DP) under differential privacy. Specifically, we achieve a new aggregation function, weighted average (WAAS), and design a privacy-enhanced aggregation scheme (PAAS) to protect the aggregated data from cloud servers. Besides, a histogram aggregation scheme with high accuracy is proposed. PMHA-DP supports fault tolerance while preserving data privacy. The performance evaluation shows that the proposal leads to less communication overhead than the existing one.

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عنوان ژورنال:

دوره 16  شماره 

صفحات  -

تاریخ انتشار 2016