AI RESEARCH

Diffusion Path Samplers via Sequential Monte Carlo

arXiv CS.LG

ArXi:2601.21951v2 Announce Type: replace-cross We develop diffusion-based samplers for target distributions known up to a normalising constant. To this end, we rely on the well-known diffusion path that smoothly interpolates between a simple base distribution and the target, popularised by diffusion models. We tackle the score estimation problem by developing an efficient sequential Monte Carlo sampler that evolves auxiliary variables from conditional distributions along the path, providing principled score and density estimates for time-varying distributions.