1. Training Diffusion Models with Federated Learning
- Author
-
de Goede, Matthijs, Cox, Bart, and Decouchant, Jérémie
- Subjects
Computer Science - Machine Learning ,Computer Science - Distributed, Parallel, and Cluster Computing ,I.2.11 - Abstract
The training of diffusion-based models for image generation is predominantly controlled by a select few Big Tech companies, raising concerns about privacy, copyright, and data authority due to their lack of transparency regarding training data. To ad-dress this issue, we propose a federated diffusion model scheme that enables the independent and collaborative training of diffusion models without exposing local data. Our approach adapts the Federated Averaging (FedAvg) algorithm to train a Denoising Diffusion Model (DDPM). Through a novel utilization of the underlying UNet backbone, we achieve a significant reduction of up to 74% in the number of parameters exchanged during training,compared to the naive FedAvg approach, whilst simultaneously maintaining image quality comparable to the centralized setting, as evaluated by the FID score., Comment: Replacement of: http://resolver.tudelft.nl/uuid:49e11cf3-5a0a-40bc-9a62-1d7fe05fbe4d. Name of the algorithm has been changed slightly due to a name collision with another paper
- Published
- 2024