Federated Domain Generalization via Prompt Learning and Aggregation
Shuai Gong, Chaoran Cui, Chunyun Zhang, Wenna Wang, Xiushan Nie, Lei, Zhu

TL;DR
This paper introduces PLAN, a federated domain generalization framework using prompt learning with pre-trained vision-language models, enhancing privacy, efficiency, and generalization to unseen domains through collaborative prompt adaptation.
Contribution
The paper proposes a novel federated learning approach leveraging prompt learning and aggregation to improve domain generalization while preserving data privacy.
Findings
PLAN outperforms existing methods on four benchmark datasets.
The framework achieves high generalization with limited prompts and lightweight communication.
Experiments demonstrate improved privacy and efficiency in federated domain generalization.
Abstract
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…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Brain Tumor Detection and Classification
