Conditional Diffusion Sampling
arXiv stat.ML / 5/6/2026
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Key Points
- The paper introduces Conditional Diffusion Sampling (CDS) to address the challenge of sampling from unnormalized multimodal distributions when density evaluations are limited.
- CDS bridges parallel tempering (PT) and diffusion methods by deriving Conditional Interpolants whose transport dynamics follow an exact, closed-form SDE without neural approximation.
- Although CDS requires sampling from a non-trivial initialization distribution, the authors show that the initialization cost decreases for sufficiently short diffusion times, both theoretically and empirically.
- CDS uses a two-stage approach: PT to sample the initialization distribution efficiently, then transport samples via the closed-form SDE for improved efficiency.
- Experiments indicate CDS can offer a better quality-versus-density-evaluation trade-off than current state-of-the-art sampling methods.
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