Papers
arxiv:2603.21342

Generalized Discrete Diffusion from Snapshots

Published on Mar 22
· Submitted by
Oussama Zekri
on Mar 24
Authors:
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Abstract

GDDS presents a unified framework for discrete diffusion modeling that supports arbitrary noising processes and demonstrates superior performance in large-vocabulary discrete generation tasks.

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We introduce Generalized Discrete Diffusion from Snapshots (GDDS), a unified framework for discrete diffusion modeling that supports arbitrary noising processes over large discrete state spaces. Our formulation encompasses all existing discrete diffusion approaches, while allowing significantly greater flexibility in the choice of corruption dynamics. The forward noising process relies on uniformization and enables fast arbitrary corruption. For the reverse process, we derive a simple evidence lower bound (ELBO) based on snapshot latents, instead of the entire noising path, that allows efficient training of standard generative modeling architectures with clear probabilistic interpretation. Our experiments on large-vocabulary discrete generation tasks suggest that the proposed framework outperforms existing discrete diffusion methods in terms of training efficiency and generation quality, and beats autoregressive models for the first time at this scale. We provide the code along with a blog post on the project page : https://oussamazekri.fr/gdds{https://oussamazekri.fr/gdds}.

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GDDS is a modular framework for discrete diffusion modeling over large discrete state spaces. The idea is to make much richer discrete noising processes practical, instead of restricting diffusion to mask/uniform noise.

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