作者
Fengwei Wang, Hui Zhu, Rongxing Lu, Yandong Zheng, Hui Li
发表日期
2021/4/1
期刊
Information Sciences
卷号
552
页码范围
183-200
出版商
Elsevier
简介
In recent years, the extensive application of machine learning technologies has been witnessed in various fields. However, in many applications, massive data are distributively stored in multiple data owners. Meanwhile, due to the privacy concerns and communication constraints, it is difficult to bridge the data silos among data owners for training a global machine learning model. In this paper, we propose a privacy-preserving and non-interactive federated learning scheme for regression training with gradient descent, named VANE. With VANE, multiple data owners are able to train a global linear, ridge or logistic regression model with the assistance of cloud, while their private local training data can be well protected. Specifically, we first design a secure data aggregation algorithm, with which local training data from multiple data owners can be aggregated and trained to a global model without disclosing any …
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