Saved in:
Bibliographic Details
Main Authors: Gong, Shuai, Cui, Chaoran, Zhang, Chunyun, Wang, Wenna, Nie, Xiushan, Zhu, Lei
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2411.10063
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866912120431443968
author Gong, Shuai
Cui, Chaoran
Zhang, Chunyun
Wang, Wenna
Nie, Xiushan
Zhu, Lei
author_facet Gong, Shuai
Cui, Chaoran
Zhang, Chunyun
Wang, Wenna
Nie, Xiushan
Zhu, Lei
contents Federated domain generalization (FedDG) aims to improve the global model generalization in unseen domains by addressing data heterogeneity under privacy-preserving constraints. A common strategy in existing FedDG studies involves sharing domain-specific knowledge among clients, such as spectrum information, class prototypes, and data styles. However, this knowledge is extracted directly from local client samples, and sharing such sensitive information poses a potential risk of data leakage, which might not fully meet the requirements of FedDG. In this paper, we introduce prompt learning to adapt pre-trained vision-language models (VLMs) in the FedDG scenario, and leverage locally learned prompts as a more secure bridge to facilitate knowledge transfer among clients. Specifically, we propose a novel FedDG framework through Prompt Learning and AggregatioN (PLAN), which comprises two training stages to collaboratively generate local prompts and global prompts at each federated round. First, each client performs both text and visual prompt learning using their own data, with local prompts indirectly synchronized by regarding the global prompts as a common reference. Second, all domain-specific local prompts are exchanged among clients and selectively aggregated into the global prompts using lightweight attention-based aggregators. The global prompts are finally applied to adapt VLMs to unseen target domains. As our PLAN framework requires training only a limited number of prompts and lightweight aggregators, it offers notable advantages in computational and communication efficiency for FedDG. Extensive experiments demonstrate the superior generalization ability of PLAN across four benchmark datasets.
format Preprint
id arxiv_https___arxiv_org_abs_2411_10063
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Federated Domain Generalization via Prompt Learning and Aggregation
Gong, Shuai
Cui, Chaoran
Zhang, Chunyun
Wang, Wenna
Nie, Xiushan
Zhu, Lei
Artificial Intelligence
Computer Vision and Pattern Recognition
Machine Learning
Federated domain generalization (FedDG) aims to improve the global model generalization in unseen domains by addressing data heterogeneity under privacy-preserving constraints. A common strategy in existing FedDG studies involves sharing domain-specific knowledge among clients, such as spectrum information, class prototypes, and data styles. However, this knowledge is extracted directly from local client samples, and sharing such sensitive information poses a potential risk of data leakage, which might not fully meet the requirements of FedDG. In this paper, we introduce prompt learning to adapt pre-trained vision-language models (VLMs) in the FedDG scenario, and leverage locally learned prompts as a more secure bridge to facilitate knowledge transfer among clients. Specifically, we propose a novel FedDG framework through Prompt Learning and AggregatioN (PLAN), which comprises two training stages to collaboratively generate local prompts and global prompts at each federated round. First, each client performs both text and visual prompt learning using their own data, with local prompts indirectly synchronized by regarding the global prompts as a common reference. Second, all domain-specific local prompts are exchanged among clients and selectively aggregated into the global prompts using lightweight attention-based aggregators. The global prompts are finally applied to adapt VLMs to unseen target domains. As our PLAN framework requires training only a limited number of prompts and lightweight aggregators, it offers notable advantages in computational and communication efficiency for FedDG. Extensive experiments demonstrate the superior generalization ability of PLAN across four benchmark datasets.
title Federated Domain Generalization via Prompt Learning and Aggregation
topic Artificial Intelligence
Computer Vision and Pattern Recognition
Machine Learning
url https://arxiv.org/abs/2411.10063