Analysis of Total Variation Minimization for Clustered Federated Learning

Alexander Jung*

*Corresponding author for this work

Research output: Chapter in Book/Report/Conference proceedingConference article in proceedingsScientificpeer-review

Abstract

A key challenge in federated learning applications is the statistical heterogeneity of local datasets. Clustered federated learning addresses this challenge by identifying clusters of local datasets that are approximately homogeneous. One recent approach to clustered federated learning is generalized total variation minimization (GTVMin). This approach requires a similarity graph which can be obtained by domain expertise or in a data-driven fashion via graph learning techniques. Under a widely applicable clustering assumption, we derive an upper bound the deviation between GTVMin solutions and their cluster-wise averages.

Original languageEnglish
Title of host publication32nd European Signal Processing Conference, EUSIPCO 2024 - Proceedings
PublisherEuropean Signal Processing Conference (EUSIPCO)
Pages1027-1031
Number of pages5
ISBN (Electronic)978-9-4645-9361-7
DOIs
Publication statusPublished - 2024
MoE publication typeA4 Conference publication
EventEuropean Signal Processing Conference - Lyon, France
Duration: 26 Aug 202430 Aug 2024
Conference number: 32

Publication series

NameEuropean Signal Processing Conference
ISSN (Print)2219-5491

Conference

ConferenceEuropean Signal Processing Conference
Abbreviated titleEUSIPCO
Country/TerritoryFrance
CityLyon
Period26/08/202430/08/2024

Keywords

  • complex networks
  • convex optimization
  • distributed algorithms
  • federated learning
  • machine learning

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