联邦学习标准简介

IF 0.7 Q4 TELECOMMUNICATIONS GetMobile-Mobile Computing & Communications Review Pub Date : 2022-01-07 DOI:10.1145/3511285.3511291
Ticao Zhang, S. Mao
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引用次数: 9

摘要

随着人们对数据隐私和安全的日益关注,收集所有用户的数据来执行机器学习任务是不可取的。提出了一种去中心化的学习框架——联邦学习,以构建一个共享的预测模型,同时将所有者的数据保存在自己的设备上。本文介绍了新兴的联邦学习标准,并讨论了它的各个方面,包括i)联邦学习的概述,ii)联邦学习的类型,iii)联邦学习的主要关注点和性能评估标准,以及iv)相关的监管要求。本文的目的是提供对标准的理解,并促进其在跨组织的模型构建中的使用,同时满足隐私和安全问题。
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An Introduction to the Federated Learning Standard
With the growing concern on data privacy and security, it is undesirable to collect data from all users to perform machine learning tasks. Federated learning, a decentralized learning framework, was proposed to construct a shared prediction model while keeping owners' data on their own devices. This paper presents an introduction to the emerging federated learning standard and discusses its various aspects, including i) an overview of federated learning, ii) types of federated learning, iii) major concerns and the performance evaluation criteria of federated learning, and iv) associated regulatory requirements. The purpose of this paper is to provide an understanding of the standard and facilitate its usage in model building across organizations while meeting privacy and security concerns.
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