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Main Authors: Luan, Hao, Ng, See-Kiong, Ling, Chun Kai
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2504.20754
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author Luan, Hao
Ng, See-Kiong
Ling, Chun Kai
author_facet Luan, Hao
Ng, See-Kiong
Ling, Chun Kai
contents Diffusion models form an important class of generative models today, accounting for much of the state of the art in cutting edge AI research. While numerous extensions beyond image and video generation exist, few of such approaches address the issue of explicit constraints in the samples generated. In this paper, we study the problem of generating paths in a layered graph (a variant of a directed acyclic graph) using discrete diffusion models, while guaranteeing that our generated samples are indeed paths. Our approach utilizes a simple yet effective representation for paths which we call the padded adjacency-list matrix (PALM). In addition, we show how to effectively perform classifier guidance, which helps steer the sampled paths to specific preferred edges without any retraining of the diffusion model. Our preliminary results show that empirically, our method outperforms alternatives which do not explicitly account for path constraints.
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publishDate 2025
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spellingShingle DDPS: Discrete Diffusion Posterior Sampling for Paths in Layered Graphs
Luan, Hao
Ng, See-Kiong
Ling, Chun Kai
Machine Learning
Diffusion models form an important class of generative models today, accounting for much of the state of the art in cutting edge AI research. While numerous extensions beyond image and video generation exist, few of such approaches address the issue of explicit constraints in the samples generated. In this paper, we study the problem of generating paths in a layered graph (a variant of a directed acyclic graph) using discrete diffusion models, while guaranteeing that our generated samples are indeed paths. Our approach utilizes a simple yet effective representation for paths which we call the padded adjacency-list matrix (PALM). In addition, we show how to effectively perform classifier guidance, which helps steer the sampled paths to specific preferred edges without any retraining of the diffusion model. Our preliminary results show that empirically, our method outperforms alternatives which do not explicitly account for path constraints.
title DDPS: Discrete Diffusion Posterior Sampling for Paths in Layered Graphs
topic Machine Learning
url https://arxiv.org/abs/2504.20754