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Main Authors: Liang, Xufeng, Qin, Zhida, Zhang, Chong, Huang, Tianyu, Ding, Gangyi
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2512.16576
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author Liang, Xufeng
Qin, Zhida
Zhang, Chong
Huang, Tianyu
Ding, Gangyi
author_facet Liang, Xufeng
Qin, Zhida
Zhang, Chong
Huang, Tianyu
Ding, Gangyi
contents Contrastive learning has demonstrated promising potential in recommender systems. Existing methods typically construct sparser views by randomly perturbing the original interaction graph, as they have no idea about the authentic user preferences. Owing to the sparse nature of recommendation data, this paradigm can only capture insufficient semantic information. To address the issue, we propose InfoDCL, a novel diffusion-based contrastive learning framework for recommendation. Rather than injecting randomly sampled Gaussian noise, we employ a single-step diffusion process that integrates noise with auxiliary semantic information to generate signals and feed them to the standard diffusion process to generate authentic user preferences as contrastive views. Besides, based on a comprehensive analysis of the mutual influence between generation and preference learning in InfoDCL, we build a collaborative training objective strategy to transform the interference between them into mutual collaboration. Additionally, we employ multiple GCN layers only during inference stage to incorporate higher-order co-occurrence information while maintaining training efficiency. Extensive experiments on five real-world datasets demonstrate that InfoDCL significantly outperforms state-of-the-art methods. Our InfoDCL offers an effective solution for enhancing recommendation performance and suggests a novel paradigm for applying diffusion method in contrastive learning frameworks.
format Preprint
id arxiv_https___arxiv_org_abs_2512_16576
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle InfoDCL: Informative Noise Enhanced Diffusion Based Contrastive Learning
Liang, Xufeng
Qin, Zhida
Zhang, Chong
Huang, Tianyu
Ding, Gangyi
Information Retrieval
Contrastive learning has demonstrated promising potential in recommender systems. Existing methods typically construct sparser views by randomly perturbing the original interaction graph, as they have no idea about the authentic user preferences. Owing to the sparse nature of recommendation data, this paradigm can only capture insufficient semantic information. To address the issue, we propose InfoDCL, a novel diffusion-based contrastive learning framework for recommendation. Rather than injecting randomly sampled Gaussian noise, we employ a single-step diffusion process that integrates noise with auxiliary semantic information to generate signals and feed them to the standard diffusion process to generate authentic user preferences as contrastive views. Besides, based on a comprehensive analysis of the mutual influence between generation and preference learning in InfoDCL, we build a collaborative training objective strategy to transform the interference between them into mutual collaboration. Additionally, we employ multiple GCN layers only during inference stage to incorporate higher-order co-occurrence information while maintaining training efficiency. Extensive experiments on five real-world datasets demonstrate that InfoDCL significantly outperforms state-of-the-art methods. Our InfoDCL offers an effective solution for enhancing recommendation performance and suggests a novel paradigm for applying diffusion method in contrastive learning frameworks.
title InfoDCL: Informative Noise Enhanced Diffusion Based Contrastive Learning
topic Information Retrieval
url https://arxiv.org/abs/2512.16576