Local Superior Soups: A Catalyst for Model Merging in Cross-Silo Federated Learning
–Neural Information Processing Systems
Federated learning (FL) is a learning paradigm that enables collaborative training of models using decentralized data. Recently, the utilization of pre-trained weight initialization in FL has been demonstrated to effectively improve model performance. However, the evolving complexity of current pre-trained models, characterized by a substantial increase in parameters, markedly intensifies the challenges associated with communication rounds required for their adaptation to FL. To address these communication cost issues and increase the performance of pre-trained model adaptation in FL, we propose an innovative model interpolation-based local training technique called Local Superior Soups.''Our This approach acts as a catalyst for the seamless adaptation of pre-trained models in in FL.We demonstrated its effectiveness and efficiency across diverse widely-used FL datasets.
Neural Information Processing Systems
May-26-2025, 19:01:40 GMT