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Personalized Federated Learning

The federated learning setup presents numerous challenges including data heterogeneity (differences in data distribution), device heterogeneity (in terms of computation capabilities, network connection, etc.), and communication efficiency. Especially data heterogeneity makes it hard to learn a single shared global model that applies to all clients. To overcome these issues, Personalized Federated Learning (PFL) aims to personalize the global model for each client in the federation.

Papers

Showing 7180 of 311 papers

TitleStatusHype
FHBench: Towards Efficient and Personalized Federated Learning for Multimodal HealthcareCode0
A Novel Algorithm for Personalized Federated Learning: Knowledge Distillation with Weighted Combination Loss0
Exploring Personalized Federated Learning Architectures for Violence Detection in Surveillance Videos0
RCC-PFL: Robust Client Clustering under Noisy Labels in Personalized Federated Learning0
pFedFair: Towards Optimal Group Fairness-Accuracy Trade-off in Heterogeneous Federated Learning0
Semantic Communication in Dynamic Channel Scenarios: Collaborative Optimization of Dual-Pipeline Joint Source-Channel Coding and Personalized Federated Learning0
Differential Privacy Personalized Federated Learning Based on Dynamically Sparsified Client Updates0
Mitigating Membership Inference Vulnerability in Personalized Federated Learning0
BTFL: A Bayesian-based Test-Time Generalization Method for Internal and External Data Distributions in Federated learningCode0
Personalized Federated Learning via Learning Dynamic Graphs0
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