4.8 Article

Anonymous and Privacy-Preserving Federated Learning With Industrial Big Data

Journal

IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS
Volume 17, Issue 9, Pages 6314-6323

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TII.2021.3052183

Keywords

Differential privacy; federated learning; industrial big data; privacy preservation; proxy server; shared parameters

Funding

  1. National Key R and D Program of China [2018YFC0803905]
  2. National Natural Science Foundation of China [61772403, U1836203]
  3. Fundamental Research Funds for the Central Universities [JB181502]
  4. Natural Science Foundation of Shaanxi Province [2019ZDLGY12-02]
  5. Shaanxi Innovation Team Project [2018TD-007]
  6. Xi'an Science and Technology Innovation Plan [201809168CX9JC10]
  7. National 111 Program of China [B16037, TII-20-1372]

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This article presents a privacy-preserving federated learning scheme for mining industrial big data, exploring the impact of shared parameter proportions on accuracy through experiments. It is found that sharing partial parameters can almost achieve the same accuracy as sharing all parameters, reducing privacy leakage.
Many artificial intelligence technologies have been applied for extracting useful information from massive industrial big data. However, the privacy issues are usually overlooked in many existing methods. In this article, we propose an anonymous and privacy-preserving federated learning scheme for the mining of industrial big data. We explored the effect of the proportion of shared parameters on the accuracy through experiments, and found that sharing partial parameters can almost achieve the accuracy of sharing all the parameters. On this basis, our proposed federated learning scheme reduces the privacy leakage by sharing fewer parameters between the server and each participant. Specifically, we leverage differential privacy on shared parameters with Gaussian mechanism to provide strict privacy preservation; the effect of different epsilon and delta on accuracy is tested; and we keep track of delta-when it reaches a certain threshold, training shall be stopped. What's more, we employ a proxy server as the middle layer between the server and all the participants to achieve anonymity of participants; it is worth noting that this can also reduce the communication burden on the federated learning server. Finally, we provide the security analysis and performance evaluations by comparing with other schemes.

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