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NAH-GNN:一种用于多行为和高跳交互推荐的基于图的框架。

NAH-GNN: A graph-based framework for multi-behavior and high-hop interaction recommendation.

作者信息

Tan Guangzhu

机构信息

School of Big Data and Artificial Intelligence, Chongqing Institute of Engineering, ChongQing, China.

School of Big Data and Software Engineering, Chongqing University, ChongQing, China.

出版信息

PLoS One. 2025 Apr 29;20(4):e0321419. doi: 10.1371/journal.pone.0321419. eCollection 2025.

DOI:10.1371/journal.pone.0321419
PMID:40299984
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC12040261/
Abstract

With the growing demand for personalized marketing, recommender systems have become essential tools to help users quickly discover products or content that match their interests. However, traditional recommendation methods face significant limitations in handling complex user behaviors and sparse data, particularly in accurately capturing relationships among diverse interaction types and higher-order dependencies. To address these challenges, this paper proposes a novel recommendation model based on graph neural networks (MBH-GNN) to optimize personalized marketing strategies. MBH-GNN constructs a multi-behavior interaction graph and employs neighborhood-aware modeling to effectively integrate diverse user-item interaction types (e.g., browsing, favoriting, purchasing), dynamically assigning weights to these behaviors to generate semantically rich embeddings. Furthermore, the model incorporates a high-hop relational learning mechanism to capture long-range user-item dependencies, enhancing its ability to model contextual information. These features enable MBH-GNN to achieve higher recommendation accuracy and diversity in complex scenarios. Experimental results demonstrate that MBH-GNN significantly outperforms existing baseline methods, achieving HR@10 of 0.789 and NDCG@10 of 0.330 on the BeiBei dataset, and HR@10 of 0.773 and NDCG@10 of 0.319 on the Tmall dataset. The model exhibits exceptional robustness and adaptability, particularly in addressing data sparsity and cold-start scenarios. This study offers an efficient and scalable solution for personalized marketing, providing critical theoretical support and practical value for improving recommendation system performance and addressing complex user behavior modeling challenges.

摘要

随着个性化营销需求的不断增长,推荐系统已成为帮助用户快速发现符合其兴趣的产品或内容的重要工具。然而,传统推荐方法在处理复杂用户行为和稀疏数据方面面临重大限制,特别是在准确捕捉不同交互类型之间的关系和高阶依赖方面。为应对这些挑战,本文提出了一种基于图神经网络的新型推荐模型(MBH-GNN),以优化个性化营销策略。MBH-GNN构建了一个多行为交互图,并采用邻域感知建模来有效整合不同的用户-物品交互类型(例如浏览、收藏、购买),动态地为这些行为分配权重,以生成语义丰富的嵌入。此外,该模型还纳入了一种高跳关系学习机制,以捕捉长期的用户-物品依赖关系,增强其对上下文信息的建模能力。这些特性使MBH-GNN能够在复杂场景中实现更高的推荐准确性和多样性。实验结果表明,MBH-GNN显著优于现有的基线方法,在贝贝数据集上实现了0.789的HR@10和0.330的NDCG@10,在天猫数据集上实现了0.773的HR@10和0.319的NDCG@10。该模型表现出卓越的鲁棒性和适应性,特别是在解决数据稀疏性和冷启动场景方面。本研究为个性化营销提供了一种高效且可扩展的解决方案,为提高推荐系统性能和应对复杂用户行为建模挑战提供了关键的理论支持和实用价值。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9ba9/12040261/2df47e275c60/pone.0321419.g007.jpg
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