论文标题

联合学习中客户选择前沿的快照

A Snapshot of the Frontiers of Client Selection in Federated Learning

论文作者

Németh, Gergely Dániel, Lozano, Miguel Ángel, Quadrianto, Novi, Oliver, Nuria

论文摘要

在分布式机器学习中,已提出联合学习(FL)是一种隐私的方法。联合学习体系结构由中央服务器和许多可以访问私人敏感数据的客户端组成。客户能够将其数据保存在本地机器中,并且仅与管理协作学习过程的中央服务器共享本地训练的模型参数。 FL在现实生活中取得了令人鼓舞的结果,例如医疗保健,能源和金融。但是,当参与客户的数量很大时,管理客户的管理开销会减慢学习速度。因此,已引入客户选择是一种策略,以限制流程的每个步骤中的沟通当事方数量。自从幼稚的客户选择客户时,文献中已经提出了几种客户选择方法。不幸的是,鉴于这是一个新兴领域,因此缺乏客户选择方法的分类法,因此很难比较方法。在本文中,我们提出了一种在联邦学习中选择客户选择的分类法,使我们能够阐明该领域的当前进展,并在这一有希望的机器学习领域中确定未来研究的潜在领域。

Federated learning (FL) has been proposed as a privacy-preserving approach in distributed machine learning. A federated learning architecture consists of a central server and a number of clients that have access to private, potentially sensitive data. Clients are able to keep their data in their local machines and only share their locally trained model's parameters with a central server that manages the collaborative learning process. FL has delivered promising results in real-life scenarios, such as healthcare, energy, and finance. However, when the number of participating clients is large, the overhead of managing the clients slows down the learning. Thus, client selection has been introduced as a strategy to limit the number of communicating parties at every step of the process. Since the early naïve random selection of clients, several client selection methods have been proposed in the literature. Unfortunately, given that this is an emergent field, there is a lack of a taxonomy of client selection methods, making it hard to compare approaches. In this paper, we propose a taxonomy of client selection in Federated Learning that enables us to shed light on current progress in the field and identify potential areas of future research in this promising area of machine learning.

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