隐私保护协同机器学习

Zheyuan Liu, Rui Zhang
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引用次数: 2

摘要

协作机器学习是一个很有前途的范例,它允许多个参与者共同训练机器学习模型,而不会将他们的私有数据集暴露给其他方。尽管与传统的机器学习方法相比,协作机器学习更加隐私友好,但在训练过程中不同参与者之间交换的中间模型参数仍然可能泄露参与者本地数据集的敏感信息。在本文中,我们引入了一种新的保护隐私的协作机器学习机制,该机制利用两个非串通服务器对参与者的中间参数进行安全聚合。与其他现有的解决方案相比,我们的解决方案可以在显著降低计算成本的同时达到相同的精度水平。2021年2月23日收到;2021年6月15日接受;于2021年7月14日发布
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Privacy Preserving Collaborative Machine Learning
Collaborative machine learning is a promising paradigm that allows multiple participants to jointly train a machine learning model without exposing their private datasets to other parties. Although collaborative machine learning is more privacy-friendly compared with conventional machine learning methods, the intermediate model parameters exchanged among different participants in the training process may still reveal sensitive information about participants’ local datasets. In this paper, we introduce a novel privacypreserving collaborative machine learning mechanism by utilizing two non-colluding servers to perform secure aggregation of the intermediate parameters from participants. Compared with other existing solutions, our solution can achieve the same level of accuracy while incurring significantly lower computational cost. Received on 23 February 2021; accepted on 15 June 2021; published on 14 July 2021
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