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Hauptverfasser: Kornhardt, Gregor, Chemseddine, Jannis, Wald, Christian, Steidl, Gabriele
Format: Preprint
Veröffentlicht: 2026
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2603.16661
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author Kornhardt, Gregor
Chemseddine, Jannis
Wald, Christian
Steidl, Gabriele
author_facet Kornhardt, Gregor
Chemseddine, Jannis
Wald, Christian
Steidl, Gabriele
contents Standard masked discrete diffusion models face limitations in reasoning tasks due to their inability to correct their own mistakes on the masking path. Since they rely on a fixed number of denoising steps, they are unable to adjust their computation to the complexity of a given problem. To address these limitations, we introduce a method based on learning a Markov transition kernel that is trained on its own outputs. This design enables tokens to be remasked, allowing the model to correct its previous mistakes. Furthermore, we do not need a fixed time schedule but use a trained stopping criterion. This allows for adaptation of the number of function evaluations to the difficulty of the reasoning problem. Our adaptation adds two lightweight prediction heads, enabling reuse and fine-tuning of existing pretrained models. On the Sudoku-Extreme dataset we clearly outperform other flow based methods with a validity of 95%. For the Countdown-4 we only need in average of 10 steps to solve almost 96% of them correctly, while many problems can be solved already in 2 steps.
format Preprint
id arxiv_https___arxiv_org_abs_2603_16661
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Self-Aware Markov Models for Discrete Reasoning
Kornhardt, Gregor
Chemseddine, Jannis
Wald, Christian
Steidl, Gabriele
Machine Learning
Standard masked discrete diffusion models face limitations in reasoning tasks due to their inability to correct their own mistakes on the masking path. Since they rely on a fixed number of denoising steps, they are unable to adjust their computation to the complexity of a given problem. To address these limitations, we introduce a method based on learning a Markov transition kernel that is trained on its own outputs. This design enables tokens to be remasked, allowing the model to correct its previous mistakes. Furthermore, we do not need a fixed time schedule but use a trained stopping criterion. This allows for adaptation of the number of function evaluations to the difficulty of the reasoning problem. Our adaptation adds two lightweight prediction heads, enabling reuse and fine-tuning of existing pretrained models. On the Sudoku-Extreme dataset we clearly outperform other flow based methods with a validity of 95%. For the Countdown-4 we only need in average of 10 steps to solve almost 96% of them correctly, while many problems can be solved already in 2 steps.
title Self-Aware Markov Models for Discrete Reasoning
topic Machine Learning
url https://arxiv.org/abs/2603.16661