Entropic Time Schedulers for Generative Diffusion Models
Journal:
arXiv
Published Date:
Apr 18, 2025
Abstract
The practical performance of generative diffusion models depends on the
appropriate choice of the noise scheduling function, which can also be
equivalently expressed as a time reparameterization. In this paper, we present
a time scheduler that selects sampling points based on entropy rather than
uniform time spacing, ensuring that each point contributes an equal amount of
information to the final generation. We prove that this time reparameterization
does not depend on the initial choice of time. Furthermore, we provide a
tractable exact formula to estimate this \emph{entropic time} for a trained
model using the training loss without substantial overhead. Alongside the
entropic time, inspired by the optimality results, we introduce a rescaled
entropic time. In our experiments with mixtures of Gaussian distributions and
ImageNet, we show that using the (rescaled) entropic times greatly improves the
inference performance of trained models. In particular, we found that the image
quality in pretrained EDM2 models, as evaluated by FID and FD-DINO scores, can
be substantially increased by the rescaled entropic time reparameterization
without increasing the number of function evaluations, with greater
improvements in the few NFEs regime.