English

Bi-level Personalization for Federated Foundation Models: A Task-vector Aggregation Approach

Machine Learning 2025-09-17 v1

Abstract

Federated foundation models represent a new paradigm to jointly fine-tune pre-trained foundation models across clients. It is still a challenge to fine-tune foundation models for a small group of new users or specialized scenarios, which typically involve limited data compared to the large-scale data used in pre-training. In this context, the trade-off between personalization and federation becomes more sensitive. To tackle these, we proposed a bi-level personalization framework for federated fine-tuning on foundation models. Specifically, we conduct personalized fine-tuning on the client-level using its private data, and then conduct a personalized aggregation on the server-level using similar users measured by client-specific task vectors. Given the personalization information gained from client-level fine-tuning, the server-level personalized aggregation can gain group-wise personalization information while mitigating the disturbance of irrelevant or interest-conflict clients with non-IID data. The effectiveness of the proposed algorithm has been demonstrated by extensive experimental analysis in benchmark datasets.

Keywords

Cite

@article{arxiv.2509.12697,
  title  = {Bi-level Personalization for Federated Foundation Models: A Task-vector Aggregation Approach},
  author = {Yiyuan Yang and Guodong Long and Qinghua Lu and Liming Zhu and Jing Jiang},
  journal= {arXiv preprint arXiv:2509.12697},
  year   = {2025}
}
R2 v1 2026-07-01T05:38:26.848Z