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Autori principali: Lyu, Shuangquan, Wang, Ming, Zhang, Huajun, Zheng, Jiasen, Lin, Junjiang, Sun, Xiaoxuan
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2510.10109
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author Lyu, Shuangquan
Wang, Ming
Zhang, Huajun
Zheng, Jiasen
Lin, Junjiang
Sun, Xiaoxuan
author_facet Lyu, Shuangquan
Wang, Ming
Zhang, Huajun
Zheng, Jiasen
Lin, Junjiang
Sun, Xiaoxuan
contents This paper designs and implements an explainable recommendation model that integrates knowledge graphs with structure-aware attention mechanisms. The model is built on graph neural networks and incorporates a multi-hop neighbor aggregation strategy. By integrating the structural information of knowledge graphs and dynamically assigning importance to different neighbors through an attention mechanism, the model enhances its ability to capture implicit preference relationships. In the proposed method, users and items are embedded into a unified graph structure. Multi-level semantic paths are constructed based on entities and relations in the knowledge graph to extract richer contextual information. During the rating prediction phase, recommendations are generated through the interaction between user and target item representations. The model is optimized using a binary cross-entropy loss function. Experiments conducted on the Amazon Books dataset validate the superior performance of the proposed model across various evaluation metrics. The model also shows good convergence and stability. These results further demonstrate the effectiveness and practicality of structure-aware attention mechanisms in knowledge graph-enhanced recommendation.
format Preprint
id arxiv_https___arxiv_org_abs_2510_10109
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Integrating Structure-Aware Attention and Knowledge Graphs in Explainable Recommendation Systems
Lyu, Shuangquan
Wang, Ming
Zhang, Huajun
Zheng, Jiasen
Lin, Junjiang
Sun, Xiaoxuan
Information Retrieval
This paper designs and implements an explainable recommendation model that integrates knowledge graphs with structure-aware attention mechanisms. The model is built on graph neural networks and incorporates a multi-hop neighbor aggregation strategy. By integrating the structural information of knowledge graphs and dynamically assigning importance to different neighbors through an attention mechanism, the model enhances its ability to capture implicit preference relationships. In the proposed method, users and items are embedded into a unified graph structure. Multi-level semantic paths are constructed based on entities and relations in the knowledge graph to extract richer contextual information. During the rating prediction phase, recommendations are generated through the interaction between user and target item representations. The model is optimized using a binary cross-entropy loss function. Experiments conducted on the Amazon Books dataset validate the superior performance of the proposed model across various evaluation metrics. The model also shows good convergence and stability. These results further demonstrate the effectiveness and practicality of structure-aware attention mechanisms in knowledge graph-enhanced recommendation.
title Integrating Structure-Aware Attention and Knowledge Graphs in Explainable Recommendation Systems
topic Information Retrieval
url https://arxiv.org/abs/2510.10109