基于图神经网络的文化资源推荐模型

Junyi Ren, Xingwei Wang, Qiang He, Bo Yi, Yanyou Zhang
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引用次数: 0

摘要

推荐系统是解决信息过载和信息不足问题的有效途径。传统的协同过滤方法在推荐系统的实际应用中存在冷启动和稀疏性问题。因此,学者们引入了辅助信息来提高推荐系统的性能。在现有的模型中,用户-物品交互信息的特征向量不够准确。本文提出了基于图神经网络的推荐模型MKR-Bine,该模型利用二部图神经网络提取用户和项目的特征向量,充分利用了用户和项目的特征。此外,我们利用知识图作为辅助信息,通过交叉压缩单元学习项目与知识图实体之间的高阶交互信息,提高推荐系统的准确率和可解释性。最后,在公开可用的推荐场景数据集上测试了我们提出的模型的性能。实验结果表明,我们的模型在真实数据集上取得了显著的效果,在稀疏数据集上的性能提升更为明显。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Cultural Resource Recommendation Model Based On Graph Neural Networks
Recommender systems provide an effective solution to the problems of information overload and information insufficiency. The traditional collaborative filtering methods, however, suffer from cold start and sparsity problems in the practical application of recommender systems. Therefore, scholars have introduced auxiliary information to improve the performance of recommender systems. In some existing models, the feature vectors of user-item interaction information are not accurate enough. In this paper, we propose MKR-Bine, a graph neural network based recommendation model, which fully exploits user and item features by extracting user and item feature vectors using a bipartite graph neural network. Moreover, we use the knowledge graph as auxiliary information to improve the accuracy and interpretability of the recommender systems by learning higher-order interaction information between items and knowledge graph entities through cross-compression units. Finally, the performance of our proposed model is tested on the publicly available datasets of recommendation scenarios. The experimental results show that our model achieves significant benefits on real datasets, and the performance improvement is more obvious on sparse datasets.
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