학술논문

Promoting Collaboration in Cross-Silo Federated Learning: Challenges and Opportunities
Document Type
Periodical
Source
IEEE Communications Magazine IEEE Commun. Mag. Communications Magazine, IEEE. 62(4):82-88 Apr, 2024
Subject
Power, Energy and Industry Applications
Signal Processing and Analysis
Computing and Processing
Communication, Networking and Broadcast Technologies
Organizations
Training
Collaboration
Modeling
Data models
Servers
Computational modeling
Federated learning
Costs
Language
ISSN
0163-6804
1558-1896
Abstract
In cross-silo federated learning (FL), companies or organizations collectively train a shared model while keeping the raw data local. The success of cross-silo FL relies on client cooperation, effective communication, and sufficient resource contributions for model training. However, several unique challenges make client collaboration in cross-silo FL difficult. First, as the global model is a public good, clients may choose to free ride on the process instead of actively contributing to the training process. Second, market competition among clients also discourages their collaboration in training, as clients may not want their business competitors to obtain a high-quality model. Third, repeated interactions among clients may further decentivize collaboration, as one can free ride on others' long-term active contributions. This article focuses on designing effective economic mechanisms to address the above challenges. Specifically, we propose an incentive mechanism to address the public good issue, a revenue-sharing mechanism to mitigate business competition, and a cooperative strategy to enable clients' long-term collaboration. Our results provide insights into better design of collaboration mechanism and communication in practical cross-silo applications. We further discuss some future directions and open issues that merit research efforts from the community.