Litcius/Paper detail

Personalized Federated Learning with Parameter Propagation

Jun Wu, Wenxuan Bao, Elizabeth A. Ainsworth, Jingrui He

202318 citationsDOI

Abstract

With decentralized data collected from diverse clients, a personalized federated learning paradigm has been proposed for training machine learning models without exchanging raw data from local clients. We dive into personalized federated learning from the perspective of privacy-preserving transfer learning, and identify the limitations of previous personalized federated learning algorithms. First, previous works suffer from negative knowledge transferability for some clients, when focusing more on the overall performance of all clients. Second, high communication costs are required to explicitly learn statistical task relatedness among clients. Third, it is computationally expensive to generalize the learned knowledge from experienced clients to new clients.

Topics & Concepts

Computer scienceFederated learningTransferabilityTask (project management)Raw dataTransfer of learningPersonalized learningPerspective (graphical)Machine learningArtificial intelligenceData scienceOpen learningTeaching methodLawManagementCooperative learningProgramming languagePolitical scienceLogitEconomicsPrivacy-Preserving Technologies in DataStatistical Methods and Inference
Personalized Federated Learning with Parameter Propagation | Litcius