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Deterministic Discrete Denoising

Published: September 25, 2025 | arXiv ID: 2509.20896v1

By: Hideyuki Suzuki, Hiroshi Yamashita

Potential Business Impact:

Makes AI create better pictures and words.

Business Areas:
Darknet Internet Services

We propose a deterministic denoising algorithm for discrete-state diffusion models based on Markov chains. The generative reverse process is derandomized by introducing a variant of the herding algorithm with weakly chaotic dynamics, which induces deterministic discrete state transitions. Our approach is a direct replacement for the stochastic denoising process, requiring neither retraining nor continuous state embeddings. We demonstrate consistent improvements in both efficiency and sample quality on text and image generation tasks. Thus, this simple derandomization approach is expected to enhance the significance of discrete diffusion in generative modeling. Furthermore, our results reveal that deterministic reverse processes, well established in continuous diffusion, can also be effective in discrete state spaces.

Country of Origin
🇯🇵 Japan

Page Count
9 pages

Category
Computer Science:
Machine Learning (CS)