差别隐私
计算机科学
贝叶斯概率
联合学习
差速器(机械装置)
噪音(视频)
信息隐私
隐私软件
人工智能
数据挖掘
互联网隐私
图像(数学)
工程类
航空航天工程
作者
Aleksei Triastcyn,Boi Faltings
出处
期刊:Cornell University - arXiv
日期:2019-12-01
被引量:139
标识
DOI:10.1109/bigdata47090.2019.9005465
摘要
We consider the problem of reinforcing federated learning with formal privacy guarantees. We propose to employ Bayesian differential privacy, a relaxation of differential privacy for similarly distributed data, to provide sharper privacy loss bounds. We adapt the Bayesian privacy accounting method to the federated setting and suggest multiple improvements for more efficient privacy budgeting at different levels. Our experiments show significant advantage over the state-of-the-art differential privacy bounds for federated learning on image classification tasks, including a medical application, bringing the privacy budget below ε = 1 at the client level, and below ε = 0.1 at the instance level. Lower amounts of noise also benefit the model accuracy and reduce the number of communication rounds.
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