Saved in:
Bibliographic Details
Main Authors: Yang, Lishan, Zhang, Wei Emma, Nguygen, Nam Kha, Hu, Po, Shu, Yanjun, Chen, Weitong, Sim, Mong Yuan
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2509.06984
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866911693354827776
author Yang, Lishan
Zhang, Wei Emma
Nguygen, Nam Kha
Hu, Po
Shu, Yanjun
Chen, Weitong
Sim, Mong Yuan
author_facet Yang, Lishan
Zhang, Wei Emma
Nguygen, Nam Kha
Hu, Po
Shu, Yanjun
Chen, Weitong
Sim, Mong Yuan
contents Federated Learning with LoRA fine-tuning offers an efficient and privacy-aware solution for institutions to collaboratively leverage their large datasets to train VLLMs. However, participating institutions often possess heterogeneous computational resources, resulting in imbalanced LoRA ranks, which pose a major challenge for effective collaboration. In addition, real-world applications in domains such as healthcare and transportation frequently suffer from missing modalities due to user mistakes or device failures, which significantly degrade global model performance in federated settings. To the best of our knowledge, no prior work has addressed these two challenges simultaneously in federated VLLMs. To tackle these issues, we propose FediLoRA, a lightweight federated LoRA aggregation framework that effectively mitigates the impact of missing modalities in heterogeneous environment. FediLoRA is explicitly motivated by the observation that simple averaging and structured editing can jointly benefit both global and personalized models. Our approach achieves strong performance across multiple general-domain and medical-domain benchmark datasets. Additional experiments on healthcare data further demonstrate that FediLoRA is well-suited for practical, real-world deployment scenarios. Our code is released at https://github.com/gotobcn8/FediLoRA.
format Preprint
id arxiv_https___arxiv_org_abs_2509_06984
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle FediLoRA: Practical Federated Fine-Tuning of Foundation Models Under Missing-Modality Constraints
Yang, Lishan
Zhang, Wei Emma
Nguygen, Nam Kha
Hu, Po
Shu, Yanjun
Chen, Weitong
Sim, Mong Yuan
Machine Learning
Artificial Intelligence
I.2.7; I.2.11
Federated Learning with LoRA fine-tuning offers an efficient and privacy-aware solution for institutions to collaboratively leverage their large datasets to train VLLMs. However, participating institutions often possess heterogeneous computational resources, resulting in imbalanced LoRA ranks, which pose a major challenge for effective collaboration. In addition, real-world applications in domains such as healthcare and transportation frequently suffer from missing modalities due to user mistakes or device failures, which significantly degrade global model performance in federated settings. To the best of our knowledge, no prior work has addressed these two challenges simultaneously in federated VLLMs. To tackle these issues, we propose FediLoRA, a lightweight federated LoRA aggregation framework that effectively mitigates the impact of missing modalities in heterogeneous environment. FediLoRA is explicitly motivated by the observation that simple averaging and structured editing can jointly benefit both global and personalized models. Our approach achieves strong performance across multiple general-domain and medical-domain benchmark datasets. Additional experiments on healthcare data further demonstrate that FediLoRA is well-suited for practical, real-world deployment scenarios. Our code is released at https://github.com/gotobcn8/FediLoRA.
title FediLoRA: Practical Federated Fine-Tuning of Foundation Models Under Missing-Modality Constraints
topic Machine Learning
Artificial Intelligence
I.2.7; I.2.11
url https://arxiv.org/abs/2509.06984