计算机科学
推论
因果推理
协同过滤
反事实思维
知识图
情报检索
推荐系统
图形
机器学习
相似性(几何)
人工智能
因果关系(物理学)
偏爱
理论计算机科学
数学
哲学
统计
物理
认识论
量子力学
图像(数学)
计量经济学
作者
Yinwei Wei,Xiang Wang,Liqiang Nie,Shaoyu Li,Dingxian Wang,Tat‐Seng Chua
标识
DOI:10.1109/tkde.2022.3231352
摘要
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 attribute 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 (Wang et al., 2019), KGAT (Wang et al., 2019) and KGIN (Wang et al., 2021).
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