Saved in:
Bibliographic Details
Main Authors: Chen, Ximing, Lei, Pui Ieng, Sheng, Yijun, Liu, Yanyan, Gong, Zhiguo
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2511.20122
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866908674093481984
author Chen, Ximing
Lei, Pui Ieng
Sheng, Yijun
Liu, Yanyan
Gong, Zhiguo
author_facet Chen, Ximing
Lei, Pui Ieng
Sheng, Yijun
Liu, Yanyan
Gong, Zhiguo
contents Diffusion models (DMs) have recently gained significant interest for their exceptional potential in recommendation tasks. This stems primarily from their prominent capability in distilling, modeling, and generating comprehensive user preferences. However, previous work fails to examine DMs in recommendation tasks through a rigorous lens. In this paper, we first experimentally investigate the completeness of recommender models from a thermodynamic view. We reveal that existing DM-based recommender models operate by maximizing the energy, while classic recommender models operate by reducing the entropy. Based on this finding, we propose a minimalistic diffusion framework that incorporates both factors via the maximization of Helmholtz free energy. Meanwhile, to foster the optimization, our reverse process is armed with a well-designed denoiser to maintain the inherent anisotropy, which measures the user-item cross-correlation in the context of bipartite graphs. Finally, we adopt an Acceptance-Rejection Gumbel Sampling Process (AR-GSP) to prioritize the far-outnumbered unobserved interactions for model robustness. AR-GSP integrates an acceptance-rejection sampling to ensure high-quality hard negative samples for general recommendation tasks, and a timestep-dependent Gumbel Softmax to handle an adaptive sampling strategy for diffusion models. Theoretical analyses and extensive experiments demonstrate that our proposed framework has distinct superiority over baselines in terms of accuracy and efficiency.
format Preprint
id arxiv_https___arxiv_org_abs_2511_20122
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Towards A Tri-View Diffusion Framework for Recommendation
Chen, Ximing
Lei, Pui Ieng
Sheng, Yijun
Liu, Yanyan
Gong, Zhiguo
Information Retrieval
Diffusion models (DMs) have recently gained significant interest for their exceptional potential in recommendation tasks. This stems primarily from their prominent capability in distilling, modeling, and generating comprehensive user preferences. However, previous work fails to examine DMs in recommendation tasks through a rigorous lens. In this paper, we first experimentally investigate the completeness of recommender models from a thermodynamic view. We reveal that existing DM-based recommender models operate by maximizing the energy, while classic recommender models operate by reducing the entropy. Based on this finding, we propose a minimalistic diffusion framework that incorporates both factors via the maximization of Helmholtz free energy. Meanwhile, to foster the optimization, our reverse process is armed with a well-designed denoiser to maintain the inherent anisotropy, which measures the user-item cross-correlation in the context of bipartite graphs. Finally, we adopt an Acceptance-Rejection Gumbel Sampling Process (AR-GSP) to prioritize the far-outnumbered unobserved interactions for model robustness. AR-GSP integrates an acceptance-rejection sampling to ensure high-quality hard negative samples for general recommendation tasks, and a timestep-dependent Gumbel Softmax to handle an adaptive sampling strategy for diffusion models. Theoretical analyses and extensive experiments demonstrate that our proposed framework has distinct superiority over baselines in terms of accuracy and efficiency.
title Towards A Tri-View Diffusion Framework for Recommendation
topic Information Retrieval
url https://arxiv.org/abs/2511.20122