论文标题
一项关于联合联盟学习的调查
A Survey on Heterogeneous Federated Learning
论文作者
论文摘要
已经提出了联合学习(FL)来保护数据隐私,并通过在没有违反隐私和安全性的组织之间进行合作培训模型来几乎组装孤立的数据筒仓。但是,FL面对各个方面的异质性,包括数据空间,统计和系统异质性。例如,没有利益冲突的协作组织通常来自不同的领域,并具有来自不同特征空间的异质数据。由于数据分配和各种资源受限的设备,参与者可能还希望培训异质的个性化本地模型。因此,提出了异质的FL来解决FL中的异质性问题。在这项调查中,我们在数据空间,统计,系统和模型异质性方面全面研究了异质FL的域。我们首先概述了FL,包括其定义和分类。然后,根据问题的设定和学习目标,我们提出了每种异质性的异质性FL设置的精确分类学。我们还研究了转移学习方法,以应对FL中的异质性。我们进一步介绍了异质FL的应用。最后,我们强调了挑战和机遇,并设想有希望的未来研究方向对新的框架设计和值得信赖的方法。
Federated learning (FL) has been proposed to protect data privacy and virtually assemble the isolated data silos by cooperatively training models among organizations without breaching privacy and security. However, FL faces heterogeneity from various aspects, including data space, statistical, and system heterogeneity. For example, collaborative organizations without conflict of interest often come from different areas and have heterogeneous data from different feature spaces. Participants may also want to train heterogeneous personalized local models due to non-IID and imbalanced data distribution and various resource-constrained devices. Therefore, heterogeneous FL is proposed to address the problem of heterogeneity in FL. In this survey, we comprehensively investigate the domain of heterogeneous FL in terms of data space, statistical, system, and model heterogeneity. We first give an overview of FL, including its definition and categorization. Then, We propose a precise taxonomy of heterogeneous FL settings for each type of heterogeneity according to the problem setting and learning objective. We also investigate the transfer learning methodologies to tackle the heterogeneity in FL. We further present the applications of heterogeneous FL. Finally, we highlight the challenges and opportunities and envision promising future research directions toward new framework design and trustworthy approaches.