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  SDMG: Smoothing Your Diffusion Models for Powerful Graph Representation Learning

Zhu, J., He, L., Gao, C., Hou, D., Su, Z., Yu, P. S., Kurths, J., Hellmann, F. (2025): SDMG: Smoothing Your Diffusion Models for Powerful Graph Representation Learning - Proceedings of Machine Learning Research, International Conference on Machine Learning (Vancouver, Canada 2025), 21 p.

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 Creators:
Zhu, Junyou1, Author           
He, Langzhou2, Author
Gao, Chao2, Author
Hou, Dongpeng2, Author
Su, Zhen1, Author           
Yu, Philip S.2, Author
Kurths, Jürgen1, Author           
Hellmann, Frank1, Author                 
Affiliations:
1Potsdam Institute for Climate Impact Research, ou_persistent13              
2External Organizations, ou_persistent22              

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 Abstract: Diffusion probabilistic models (DPMs) have recently demonstrated impressive generative capabilities. There is emerging evidence that their sample reconstruction ability can yield meaningful representations for recognition tasks. In this paper, we demonstrate that the objectives underlying generation and representation learning are not perfectly aligned. Through a spectral analysis, we find that minimizing the mean squared error (MSE) between the original graph and its reconstructed counterpart does not necessarily optimize representations for downstream tasks. Instead, focusing on reconstructing a small subset of features, specifically those capturing global information, proves to be more effective for learning powerful representations. Motivated by these insights, we propose a novel framework, the Smooth Diffusion Model for Graphs (SDMG), which introduces a multi-scale smoothing loss and low-frequency information encoders to promote the recovery of global, low-frequency details, while suppressing irrelevant high-frequency noise. Extensive experiments validate the effectiveness of our method, suggesting a promising direction for advancing diffusion models in graph representation learning.

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Language(s): eng - English
 Dates: 2025-112025-11-112025-11-11
 Publication Status: Finally published
 Pages: 21
 Publishing info: -
 Table of Contents: -
 Rev. Type: Peer
 Identifiers: MDB-ID: No data to archive
PIKDOMAIN: RD4 - Complexity Science
Organisational keyword: RD4 - Complexity Science
Research topic keyword: Complex Networks
Model / method: Machine Learning
Model / method: Nonlinear Data Analysis
 Degree: -

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Title: International Conference on Machine Learning
Place of Event: Vancouver, Canada
Start-/End Date: 2025-07-13 - 2025-07-19

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Title: Proceedings of Machine Learning Research
Source Genre: Proceedings
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Pages: - Volume / Issue: 267 Sequence Number: - Start / End Page: - Identifier: ISSN: 2640-3498