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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 231240 of 311 papers

TitleStatusHype
Convergence of First-Order Algorithms for Meta-Learning with Moreau Envelopes0
Reliable and Interpretable Personalized Federated Learning0
How To Prevent the Poor Performance Clients for Personalized Federated Learning?0
Personalized Semantics Excitation for Federated Image Classification0
Hierarchical Over-the-Air FedGradNorm0
Multi-Layer Personalized Federated Learning for Mitigating Biases in Student Predictive Analytics0
PGFed: Personalize Each Client's Global Objective for Federated LearningCode0
Flow: Per-Instance Personalized Federated Learning Through Dynamic RoutingCode0
Exploiting Personalized Invariance for Better Out-of-distribution Generalization in Federated Learning0
Personalized Federated Learning with Hidden Information on Personalized Prior0
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