迈向联邦学习中的有效沟通:一项当代调查

Zihao Zhao, Yuzhu Mao, Yang Liu, Linqi Song, Ouyang Ye, Xinlei Chen, Wenbo Ding
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引用次数: 11

摘要

在传统的分布式机器学习场景中,用户的私人数据在客户端和中央服务器之间传输,这导致了巨大的潜在隐私风险。为了平衡数据隐私和模型联合训练的问题,提出了一种具有隐私保护机制的分布式机器学习过程,可以在不泄露原始数据的情况下实现多方协同计算。然而,在实践中,外语面临着各种具有挑战性的交流问题。本文从传播效率、传播环境和传播资源配置三个方面对外语传播研究的发展进行了系统评估,以阐明这些传播问题之间的关系。首先,我们梳理了当前FL通信中存在的挑战。其次,我们整理了FL通信相关的论文,并根据它们之间的逻辑关系描述了该领域的整体发展趋势。最后,我们讨论了未来FL通信的研究方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Efficient Communications in Federated Learning: A Contemporary Survey
In the traditional distributed machine learning scenario, the user's private data is transmitted between clients and a central server, which results in significant potential privacy risks. In order to balance the issues of data privacy and joint training of models, federated learning (FL) is proposed as a particular distributed machine learning procedure with privacy protection mechanisms, which can achieve multi-party collaborative computing without revealing the original data. However, in practice, FL faces a variety of challenging communication problems. This review seeks to elucidate the relationship between these communication issues by methodically assessing the development of FL communication research from three perspectives: communication efficiency, communication environment, and communication resource allocation. Firstly, we sort out the current challenges existing in the communications of FL. Second, we have collated FL communications-related papers and described the overall development trend of the field based on their logical relationship. Ultimately, we discuss the future directions of research for communications in FL.
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