Multilevel and Sequential Monte Carlo for Training-Free Diffusion Guidance
Gleich, Aidan, Schmidler, Scott C.
We address the problem of accurate, training-free guidance for conditional generation in trained diffusion models. Existing methods typically rely on point-estimates to approximate the posterior score, often resulting in biased approximations that fail to capture multimodality inherent to the reverse process of diffusion models. We propose a sequential Monte Carlo (SMC) framework that constructs an unbiased estimator of $p_θ(y|x_t)$ by integrating over the full denoising distribution via Monte Carlo approximation. To ensure computational tractability, we incorporate variance-reduction schemes based on Multi-Level Monte Carlo (MLMC). Our approach achieves new state-of-the-art results for training-free guidance on CIFAR-10 class-conditional generation, achieving $95.6\%$ accuracy with $3\times$ lower cost-per-success than baselines. On ImageNet, our algorithm achieves $1.5\times$ cost-per-success advantage over existing methods.
Jan-30-2026
- Country:
- Europe
- Austria (0.04)
- France > Hauts-de-France
- Italy > Calabria
- Catanzaro Province > Catanzaro (0.04)
- North America
- Canada > British Columbia
- Vancouver (0.04)
- United States > North Carolina
- Durham County > Durham (0.04)
- Canada > British Columbia
- Europe
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- Research Report (0.82)
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