IEEE Access (Jan 2020)

Privacy-Protection Path Finding Supporting the Ranked Order on Encrypted Graph in Big Data Environment

  • Bin Wu,
  • Xianyi Chen,
  • Caicai Zhang,
  • Zhuolin Mei,
  • Zhiqiang Zhao,
  • Zongda Wu,
  • Tao Yan

DOI
https://doi.org/10.1109/ACCESS.2020.3040781
Journal volume & issue
Vol. 8
pp. 214596 – 214604

Abstract

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Since data outsourcing in big data environment become popular and become a trend, large quantities of graph data are outsourced to the big data server for saving cost. As the big data server can not be fully reliable, people usually encrypt the graph data before they are outsourced to the big data platform for the privacy protection. The path finding is a frequently-used action and can be useful for production and living. The path finding supporting the ranked order is a more useful operation, and a user can obtain a ranked search result set. Because of the outsourced graph data being encrypted on the big data server, the path finding supporting the ranked order becomes a task with enough challenge. In this paper, we propose a solution to perform privacy-protection path finding supporting the ranked order on encrypted graph in big data environment (PPFR). Our research uses an encryption mechanism and a ranking strategy to achieve path finding supporting the ranked order. We formally analyze the security of our scheme. We demonstrate the efficiency of our proposed scheme on a real graph data set by experiment.

Keywords