计算机科学
信息隐私
隐私保护
原始数据
互联网隐私
工作(物理)
联合学习
外包
患者隐私
计算机安全
业务
人工智能
机械工程
医疗保健
营销
经济
工程类
程序设计语言
经济增长
作者
Junxu Liu,Jian Lou,Li Xiong,Xiaofeng Meng
标识
DOI:10.1145/3583780.3615247
摘要
The meteoric rise of cross-silo Federated Learning (FL) is due to its ability to mitigate data breaches during collaborative training. To further provide rigorous privacy protection with consideration of the varying privacy requirements across different clients, a privacy-enhanced line of work on personalized differentially private federated learning (PDP-FL) has been proposed. However, the existing solution for PDP-FL [20] assumes the raw privacy budgets of all clients should be collected by the server. These values are then directly utilized to improve the model utility via facilitating the privacy preferences partitioning (i.e., partitioning all clients into multiple privacy groups). It is however non-realistic because the raw privacy budgets can be quite informative and sensitive.
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