cs.AI updates on arXiv.org 07月29日 12:22
Beyond Interactions: Node-Level Graph Generation for Knowledge-Free Augmentation in Recommender Systems
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本文介绍了一种名为NodeDiffRec的知识自由增强推荐框架,通过节点级图生成和扩散技术,在无外部知识的情况下显著提升推荐系统的语义多样性和结构连通性,实验结果显示其在多个数据集上达到SOTA性能。

arXiv:2507.20578v1 Announce Type: cross Abstract: Recent advances in recommender systems rely on external resources such as knowledge graphs or large language models to enhance recommendations, which limit applicability in real-world settings due to data dependency and computational overhead. Although knowledge-free models are able to bolster recommendations by direct edge operations as well, the absence of augmentation primitives drives them to fall short in bridging semantic and structural gaps as high-quality paradigm substitutes. Unlike existing diffusion-based works that remodel user-item interactions, this work proposes NodeDiffRec, a pioneering knowledge-free augmentation framework that enables fine-grained node-level graph generation for recommendations and expands the scope of restricted augmentation primitives via diffusion. By synthesizing pseudo-items and corresponding interactions that align with the underlying distribution for injection, and further refining user preferences through a denoising preference modeling process, NodeDiffRec dramatically enhances both semantic diversity and structural connectivity without external knowledge. Extensive experiments across diverse datasets and recommendation algorithms demonstrate the superiority of NodeDiffRec, achieving State-of-the-Art (SOTA) performance, with maximum average performance improvement 98.6% in Recall@5 and 84.0% in NDCG@5 over selected baselines.

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推荐系统 知识自由模型 NodeDiffRec 扩散技术 SOTA性能
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