Training Latent Diffusion Models with Interacting Particle Algorithms
About
We introduce a novel particle-based algorithm for end-to-end training of latent diffusion models. We reformulate the training task as minimizing a free energy functional and obtain a gradient flow that does so. By approximating the latter with a system of interacting particles, we obtain the algorithm, which we underpin theoretically by providing error guarantees. The novel algorithm compares favorably in experiments with previous particle-based methods and variational inference analogues.
Tim Y. J. Wang, Juan Kuntz, O. Deniz Akyildiz• 2025
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Image Generation | CIFAR-10 | FID46.95 | 203 | |
| Image Generation | CelebA-64 | FID21.43 | 75 | |
| Image Generation | SVHN | FID13.51 | 26 | |
| Image Generation | SVHN (test) | FID13.51 | 20 |
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