Poster Session 2 · Wednesday, December 3, 2025 4:30 PM → 7:30 PM
#603
Sampling from multi-modal distributions with polynomial query complexity in fixed dimension via reverse diffusion
Abstract
Even in low dimensions, sampling from multi-modal distributions is challenging.
We provide the first sampling algorithm for a broad class of distributions --- including all Gaussian mixtures --- with a query complexity that is polynomial in the parameters governing multi-modality, assuming fixed dimension. Our sampling algorithm simulates a time-reversed diffusion process, using a self-normalized Monte Carlo estimator of the intermediate score functions.
Unlike previous works, it avoids metastability, requires no prior knowledge of the mode locations, and relaxes the well-known log-smoothness assumption which excluded general Gaussian mixtures so far.