Abstract
Heterogeneity arising from label distribution skew and data scarcity can cause inaccuracy and unfairness in IC applications that heavily rely on distributed computing. To deal with it, this article proposes a novel PFL algorithm, named federated contrastive shareable representations (FedCoSRs), to facilitate knowledge sharing among clients while maintaining data privacy. Specifically, the parameters of local models' shallow layers and typical local representations are both considered as shareable information for the server and are aggregated globally. To address performance degradation caused by label distribution skew among clients, CL is adopted between local and global representations to enrich local knowledge. Additionally, to ensure fairness for clients with scarce data, FedCoSR introduces adaptive local aggregation to coordinate the global model involvement in each client. Our simulations demonstrate FedCoSR's effectiveness in mitigating label heterogeneity by achieving accuracy and fairness improvements over existing methods on datasets with varying degrees of label heterogeneity.
| Original language | English |
|---|---|
| Pages (from-to) | 5841-5854 |
| Number of pages | 14 |
| Journal | IEEE Transactions on Cybernetics |
| Volume | 55 |
| Issue number | 12 |
| DOIs | |
| Publication status | Published - Dec 2025 |
Keywords
- CL
- intelligent communication (IC)
- label heterogeneity
- personalized federated learning (PFL)
- representation learning
Projects
- 1 Finished
-
Reliable Integration of Distributed Low-Carbon Energy Resources
Wang, H. (Primary Chief Investigator (PCI))
ARC - Australian Research Council, Monash University – Internal School Contribution
31/01/23 → 30/01/26
Project: Research
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