论文标题

metakrec:协作元知识增强了推荐系统

MetaKRec: Collaborative Meta-Knowledge Enhanced Recommender System

论文作者

Yang, Liangwei, Wang, Shen, Gong, Jibing, Zheng, Shaojie, Du, Shuying, Liu, Zhiwei, Yu, Philip S.

论文摘要

知识图(KG)增强建议表明,建议系统(RECSYS)的性能提高,并引起了相当大的研究兴趣。最近,文献在协作知识图上采用了神经图网络(GNN),并构建了端到端kg增强的recsys。但是,这些方法中的大多数都有三个局限性:(1)将协作知识图视为均质图,并忽略项目之间高度异质的关系,(2)缺乏设计来明确利用丰富的侧面信息,(3)忽略用户偏好的丰富知识。为了填补这一空白,在本文中,我们探讨了项目之间丰富的,异质的关系,并提出了一种新的KG增强推荐模型,称为协作Meta-Meta-nkookledge增强了推荐系统(METAKREC)。特别是,我们专注于建模项目之间丰富的,异质的语义关系,并构建几种协作元KG,以明确描述项目在元知识的指导下的相关性。除了从KG获得的知识外,我们还利用从用户偏好中提取的用户知识来构建元KG。构造的元公斤可以从知识图和用户偏好中捕获知识。此外。我们利用光卷积编码器将项目关系递归整合到每个协作元KG中。该方案使我们能够明确地收集项目之间的异质语义关系,并将其编码为项目的表示。此外,我们提出渠道的关注,以融合来自不同元KGS的项目和用户表示。在四个现实世界的基准数据集上进行了广泛的实验,这表明在常规和冷启动推荐设置上,对最先进的基线的收益很大。

Knowledge graph (KG) enhanced recommendation has demonstrated improved performance in the recommendation system (RecSys) and attracted considerable research interest. Recently the literature has adopted neural graph networks (GNNs) on the collaborative knowledge graph and built an end-to-end KG-enhanced RecSys. However, the majority of these approaches have three limitations: (1) treat the collaborative knowledge graph as a homogeneous graph and overlook the highly heterogeneous relationships among items, (2) lack of design to explicitly leverage the rich side information, and (3) overlook the rich knowledge in user preference. To fill this gap, in this paper, we explore the rich, heterogeneous relationship among items and propose a new KG-enhanced recommendation model called Collaborative Meta-Knowledge Enhanced Recommender System (MetaKRec). In particular, we focus on modeling the rich, heterogeneous semantic relationships among items and construct several collaborative Meta-KGs to explicitly depict the relatedness of the items under the guidance of meta-knowledge. In addition to the knowledge obtained from KG, we leverage user knowledge that extracts from user preference to construct the Meta-KGs. The constructed Meta-KGs can capture the knowledge from both the knowledge graph and user preference. Furthermore. we utilize a light convolution encoder to recursively integrate the item relationship in each collaborative Meta-KGs. This scheme allows us to explicitly gather the heterogeneous semantic relationships among items and encode them into the representations of items. In addition, we propose channel attention to fuse the item and user representations from different Meta-KGs. Extensive experiments are conducted on four real-world benchmark datasets, demonstrating significant gains over the state-of-the-art baselines on both regular and cold-start recommendation settings.

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