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GPT-FL: Generative Pre-Trained Model-Assisted Federated Learning
- Zhang, Tuo;
- Feng, Tiantian;
- Alam, Samiul;
- DImitriadis, DImitrios;
- Lee, Sunwoo;
- 외 3명
SCOPUS
1초록
In this work, we propose GPT-FL, a generative pre-trained model-assisted federated learning (FL) framework. At its core, GPT-FL leverages generative pre-trained models to generate diversified synthetic data. These generated data are used to train a downstream model on the server, which is then fine-tuned with private client data under the standard FL framework. We show that GPT-FL consistently outperforms state-of-the-art FL methods in terms of model test accuracy, communication efficiency, and client sampling efficiency. Through comprehensive ablation analysis, we discover that the downstream model generated by synthetic data plays a crucial role in controlling the direction of gradient diversity during FL training, which enhances convergence speed and contributes to the notable accuracy boost observed with GPT-FL. Also, regardless of whether the target data falls within or outside the domain of the pretrained generative model, GPT-FL consistently achieves significant performance gains, surpassing the results obtained by models trained solely with FL or synthetic data. © 2025 IEEE.
키워드
- 제목
- GPT-FL: Generative Pre-Trained Model-Assisted Federated Learning
- 저자
- Zhang, Tuo; Feng, Tiantian; Alam, Samiul; DImitriadis, DImitrios; Lee, Sunwoo; Zhang, Mi; Narayanan, Shrikanth Shri S.; Avestimehr, Salman
- 발행일
- 2025
- 유형
- Conference paper
- 저널명
- IEEE Computer Society Conference on Computer Vision and Pattern Recognition Workshops
- 페이지
- 1752 ~ 1761