Multi-center heterogeneous data are a hot topic in federated learning. The data of clients and centers do not follow a normal distribution, posing significant challenges to learning. Based on the assumption that the client data have a multivariate skewed normal distribution, we improve the DP-Fed-mv-PPCA model. We use a Bayesian framework to construct prior distributions of local parameters and use expectation maximization and pseudo-Newton algorithms to obtain robust parameter estimates. Then, the clipping algorithm and differential privacy algorithm are used to solve the problem in which the model parameters do not have a display solution and achieve privacy guarantee. Furthermore, we verified the effectiveness of our model using synthetic and actual data from the Internet of vehicles.
A federated learning differential privacy algorithm for non-Gaussian heterogeneous data.
一种用于非高斯异构数据的联邦学习差分隐私算法。
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| 期刊: | Scientific Reports | 影响因子: | |
| 时间: | 起止号: | ||
| doi: | 10.1038/s41598-023-33044-y | ||
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