3.8 Proceedings Paper

PEFL: A Privacy-Enhanced Federated Learning Scheme for Big Data Analytics

出版社

IEEE
DOI: 10.1109/GLOBECOM38437.2019.9014272

关键词

Federated learning; big data analysis; privacy-preserving; secure data aggregation

资金

  1. National Key Research and Development Program of China [2017YFB0802303]
  2. National Natural Science Foundation of China [61672283]
  3. Postgraduate Research AMP
  4. Practice Innovation Program of Jiangsu Province [KYCX18_0308]

向作者/读者索取更多资源

Federated learning has emerged as a promising solution for big data analytics, which jointly trains a global model across multiple mobile devices. However, participants' sensitive data information may be leaked to an untrusted server through uploaded gradient vectors. To address this problem, we propose a privacy -enhanced federated learning (PEFL) scheme to protect the gradients over an untrusted server. This is mainly enabled by encrypting participants' local gradients with Paillier homomorphic cryptosystem. In order to reduce the computation costs of the cryptosystem, we utilize the distributed selective stochastic gradient descent (DSSGD) method in the local training phase to achieve the distributed encryption. Moreover, the encrypted gradients can be further used for secure sum aggregation at the server side. In this way, the untrusted server can only learn the aggregated statistics for all the participants' updates, while each individual's private information will be well-protected. For the security analysis, we theoretically prove that our scheme is secure under several cryptographic hard problems. Exhaustive experimental results demonstrate that PEFL has low computation costs while reaching high accuracy in the settings of federated learning.

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