Published November 24, 2024 | Version v1
Publication Open

FedHARM: Harmonizing Model Architectural Diversity in Federated Learning

  • 1. ROR icon Centre for Research and Technology Hellas
  • 2. ROR icon University of West Attica
  • 3. Centre for Research and Technology-Hellas

Description

In the domain of Federated Learning (FL), the issue of managing variability in model architectures surpasses a mere technical barrier, representing a crucial aspect of the field's evolution, especially considering the ever-increasing number of model architectures emerging in the literature. This focus on architecture variability emerges from the unique nature of FL, where diverse devices or participants, each with their own data and computational constraints, collaboratively train a shared model. The proposed FL system architecture facilitates the deployment of diverse convolutional neural network (CNN) architectures across distinct clients, while outperforming the state-of-the-art FL methodologies. FedHARM capitalizes on the strengths of different architectures while limiting their weaknesses by converging each local client on a shared dataset to achieve superior performance on the test set.

Files

fedharm-harmonizing-model-architectural-diversity-in-federated-learning.pdf

Additional details

Funding

European Commission
ARIEN - ARtificial IntelligencE in fighting illicit drugs production and traffickiNg 101121329