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Enhancing robustness in federated learning using minimal repair and dynamic adaptation in a scenario with client failures

  • 27-02-2025
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Abstract

The article discusses the challenges of federated learning (FL) in connected and autonomous vehicles (CAVs), particularly focusing on client failures and data heterogeneity. It introduces ECS-HDSR, a client selection mechanism that uses entropy to ensure data diversity and a minimal repair model (MRM) to substitute failed clients. The method enhances the resilience and stability of FL in dynamic environments, as demonstrated through comprehensive simulations. The paper also compares ECS-HDSR with existing client selection methods, highlighting its superior performance in maintaining model accuracy and convergence even under high client failure rates. The article concludes by emphasizing the need for further research into adaptive communication protocols and privacy-preserving mechanisms to enhance the robustness of FL in CAVs.

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Title
Enhancing robustness in federated learning using minimal repair and dynamic adaptation in a scenario with client failures
Authors
John Sousa
Eduardo Ribeiro
Romulo Bustincio
Lucas Bastos
Renan Morais
Eduardo Cerqueira
Denis Rosário
Publication date
27-02-2025
Publisher
Springer International Publishing
Published in
Annals of Telecommunications / Issue 9-10/2025
Print ISSN: 0003-4347
Electronic ISSN: 1958-9395
DOI
https://doi.org/10.1007/s12243-025-01075-3
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