LGApr 9, 2025

FedMerge: Federated Personalization via Model Merging

arXiv:2504.06768v22 citationsh-index: 36
Originality Highly original
AI Analysis

This addresses the challenge of personalization in federated learning for clients with heterogeneous data, offering a more efficient alternative to local finetuning.

The paper tackles the problem of serving non-IID clients in federated learning by proposing FedMerge, which creates personalized models per client via merging multiple global models with optimized weights, and it consistently outperforms existing methods across diverse non-IID settings.

One global model in federated learning (FL) might not be sufficient to serve many clients with non-IID tasks and distributions. While there has been advances in FL to train multiple global models for better personalization, they only provide limited choices to clients so local finetuning is still indispensable. In this paper, we propose a novel ``FedMerge'' approach that can create a personalized model per client by simply merging multiple global models with automatically optimized and customized weights. In FedMerge, a few global models can serve many non-IID clients, even without further local finetuning. We formulate this problem as a joint optimization of global models and the merging weights for each client. Unlike existing FL approaches where the server broadcasts one or multiple global models to all clients, the server only needs to send a customized, merged model to each client. Moreover, instead of periodically interrupting the local training and re-initializing it to a global model, the merged model aligns better with each client's task and data distribution, smoothening the local-global gap between consecutive rounds caused by client drift. We evaluate FedMerge on three different non-IID settings applied to different domains with diverse tasks and data types, in which FedMerge consistently outperforms existing FL approaches, including clustering-based and mixture-of-experts (MoE) based methods.

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