Learned Reference-based Diffusion Sampling for multi-modal distributions
Over the past few years, several approaches utilizing score-based diffusion have been proposed to sample from probability distributions, that is without having access to exact samples and relying solely on evaluations of unnormalized densities. The resulting samplers approximate the time-reversal of...
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Zusammenfassung: | Over the past few years, several approaches utilizing score-based diffusion
have been proposed to sample from probability distributions, that is without
having access to exact samples and relying solely on evaluations of
unnormalized densities. The resulting samplers approximate the time-reversal of
a noising diffusion process, bridging the target distribution to an
easy-to-sample base distribution. In practice, the performance of these methods
heavily depends on key hyperparameters that require ground truth samples to be
accurately tuned. Our work aims to highlight and address this fundamental
issue, focusing in particular on multi-modal distributions, which pose
significant challenges for existing sampling methods. Building on existing
approaches, we introduce Learned Reference-based Diffusion Sampler (LRDS), a
methodology specifically designed to leverage prior knowledge on the location
of the target modes in order to bypass the obstacle of hyperparameter tuning.
LRDS proceeds in two steps by (i) learning a reference diffusion model on
samples located in high-density space regions and tailored for multimodality,
and (ii) using this reference model to foster the training of a diffusion-based
sampler. We experimentally demonstrate that LRDS best exploits prior knowledge
on the target distribution compared to competing algorithms on a variety of
challenging distributions. |
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DOI: | 10.48550/arxiv.2410.19449 |