Knowledge Graph (KG), as a side-information, tends to be utilized to supplement the collaborative filtering (CF) based recommendation model. By mapping items with the entities in KGs, prior studies mostly extract the knowledge information from the KGs and inject it into the representations of users and items. Despite their remarkable performance, they fail to model the user preference on attributes in the KG, since they ignore that (1) the structure information of KG may hinder the user preference learning, and (2) the user's interacted attributes will result in the bias issue on the similarity scores. With the help of causality tools, we construct the causal-effect relation between the variables in KG-based recommendation and identify the reasons causing the mentioned challenges. Accordingly, we develop a new framework, termed Knowledge Graph-based Causal Recommendation (KGCR), which implements the deconfounded user preference learning and adopts counterfactual inference to eliminate bias in the similarity scoring. Ultimately, we evaluate our proposed model on three datasets, including Amazon-book, LastFM, and Yelp2018 datasets. By conducting extensive experiments on the datasets, we demonstrate that KGCR outperforms several state-of-the-art baselines, such as KGNN-LS, KGAT and KGIN.
翻译:知识图(KG)作为一种侧面信息,往往被用来补充基于协作过滤(CF)的建议模型。通过与KG实体绘制项目图,以往的研究大多从KG实体中提取知识信息,并将其注入用户和项目的表述中。尽管它们表现出色,但它们未能模拟用户对KG属性的偏好,因为它们忽视:(1) KG的结构信息可能阻碍用户的偏好学习,(2) 用户的交互属性将导致相似分的偏差问题。在因果关系工具的帮助下,我们构建了基于KG建议变量之间的因果关系,并找出了造成上述挑战的原因。因此,我们开发了一个新的框架,称为基于知识图的Causal建议(KGCR),用以实施无根据的用户偏好学习,并采用反事实推论来消除类似评分中的偏差。最后,我们评估了三个数据集的拟议模型,包括亚马孙书、LastFM和Yelp2018数据集。我们通过对KAT-G的基线进行广泛的实验,我们展示了KG-G的几条基线。