학술논문

A Comprehensive Empirical Study of Heterogeneity in Federated Learning
Document Type
Periodical
Source
IEEE Internet of Things Journal IEEE Internet Things J. Internet of Things Journal, IEEE. 10(16):14071-14083 Aug, 2023
Subject
Computing and Processing
Communication, Networking and Broadcast Technologies
Training
Servers
Performance evaluation
Behavioral sciences
Internet of Things
Data models
Federated learning
Fairness
federated learning (FL)
heterogeneity performance
Language
ISSN
2327-4662
2372-2541
Abstract
Federated learning (FL) is becoming a popular paradigm for collaborative learning over distributed, private data sets owned by nontrusting entities. FL has seen successful deployment in production environments, and it has been adopted in services, such as virtual keyboards, auto-completion, item recommendation, and several IoT applications. However, FL comes with the challenge of performing training over largely heterogeneous data sets, devices, and networks that are out of the control of the centralized FL server. Motivated by this inherent challenge, we aim to empirically characterize the impact of device and behavioral heterogeneity on the trained model. We conduct an extensive empirical study spanning nearly 1.5K unique configurations on five popular FL benchmarks. Our analysis shows that these sources of heterogeneity have a major impact on both model quality and fairness, causing up to $4.6\times $ and $2.2\times $ degradation in the quality and fairness, respectively, thus shedding light on the importance of considering heterogeneity in FL system design.