Prototype-Guided and Lightweight Adapters for Inherent Interpretation and Generalisation in Federated Learning
Journal:
arXiv
Published Date:
Jul 8, 2025
Abstract
Federated learning (FL) provides a promising paradigm for collaboratively
training machine learning models across distributed data sources while
maintaining privacy. Nevertheless, real-world FL often faces major challenges
including communication overhead during the transfer of large model parameters
and statistical heterogeneity, arising from non-identical independent data
distributions across clients. In this work, we propose an FL framework that 1)
provides inherent interpretations using prototypes, and 2) tackles statistical
heterogeneity by utilising lightweight adapter modules to act as compressed
surrogates of local models and guide clients to achieve generalisation despite
varying client distribution. Each client locally refines its model by aligning
class embeddings toward prototype representations and simultaneously adjust the
lightweight adapter. Our approach replaces the need to communicate entire model
weights with prototypes and lightweight adapters. This design ensures that each
client's model aligns with a globally shared structure while minimising
communication load and providing inherent interpretations. Moreover, we
conducted our experiments on a real-world retinal fundus image dataset, which
provides clinical-site information. We demonstrate inherent interpretable
capabilities and perform a classification task, which shows improvements in
accuracy over baseline algorithms.