基于加权知识图和图卷积网络的可解释推荐

Rima Boughareb, H. Seridi-Bouchelaghem, S. Beldjoudi
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引用次数: 1

摘要

知识图谱(Knowledge Graphs, KGs)已被证明在提供关于推荐系统(RSs)项目的丰富和高度定义的结构化数据方面具有巨大潜力。本文介绍了一种基于KGs和图卷积网络(GCNs)的可解释RS - Explain- KGCN。该系统强调了语义信息表征和消息传递的高阶连通性的重要性,以探索潜在的用户偏好。因此,基于特定于关系的邻域聚合函数,它旨在为每个给定项目生成一组依赖于KG中的每个语义关系的特定于关系的嵌入。具体来说,特定于关系的聚合器根据邻居与目标节点的关系来区分它们,从而允许系统显式地对各种关系的语义进行建模。在top-[公式:见文本]推荐任务的两个真实数据集上进行的实验证明了所提出系统的最先进性能。除了在准确率和召回率方面提高预测性能外,Explain-KGCN还充分利用了KGs提供的丰富结构化信息来提供推荐解释。
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Explainable Recommendation Based on Weighted Knowledge Graphs and Graph Convolutional Networks
Knowledge Graphs (KGs) have been shown to have great potential to provide rich and highly defined structured data about Recommender Systems (RSs) items. This paper introduces Explain- KGCN, an Explainable RS based on KGs and Graph Convolutional Networks (GCNs). The system emphasises the importance of semantic information characterisation and high-order connectivity of message passing to explore potential user preferences. Thus, based on a relation-specific neighbourhood aggregation function, it aims to generate for each given item a set of relation-specific embeddings that depend on each semantic relation in the KG. Specifically, the relation-specific aggregator discriminates neighbours based on their relationship with the target node, allowing the system to model the semantics of various relationships explicitly. Experiments conducted on two real-world datasets for the top-[Formula: see text] recommendation task demonstrate the state-of-the-art performance of the system proposed. Besides improving predictive performance in terms of precision and recall, Explain-KGCN fully exploits wealthy structured information provided by KGs to offer recommendation explanation.
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