Recommender systems, which merely leverage user-item interactions for user preference prediction (such as the collaborative filtering-based ones), often face dramatic performance degradation when the interactions of users or items are insufficient. In recent years, various types of side information have been explored to alleviate this problem. Among them, knowledge graph (KG) has attracted extensive research interests as it can encode users/items and their associated attributes in the graph structure to preserve the relation information. In contrast, less attention has been paid to the item-item co-occurrence information (i.e., \textit{co-view}), which contains rich item-item similarity information. It provides information from a perspective different from the user/item-attribute graph and is also valuable for the CF recommendation models. In this work, we make an effort to study the potential of integrating both types of side information (i.e., KG and item-item co-occurrence data) for recommendation. To achieve the goal, we propose a unified graph-based recommendation model (UGRec), which integrates the traditional directed relations in KG and the undirected item-item co-occurrence relations simultaneously. In particular, for a directed relation, we transform the head and tail entities into the corresponding relation space to model their relation; and for an undirected co-occurrence relation, we project head and tail entities into a unique hyperplane in the entity space to minimize their distance. In addition, a head-tail relation-aware attentive mechanism is designed for fine-grained relation modeling. Extensive experiments have been conducted on several publicly accessible datasets to evaluate the proposed model. Results show that our model outperforms several previous state-of-the-art methods and demonstrate the effectiveness of our UGRec model.
翻译:推荐人系统只是利用用户-项目互动来进行用户偏好预测(例如协作过滤基础的系统),当用户或项目的互动不足时,往往面临显著的性能退化;近年来,为缓解这一问题,探索了各种侧信息,其中包括:知识图(KG)吸引了广泛的研究兴趣,因为它可以在图表结构中将用户/项目及其相关属性编码为维护关系信息。相比之下,较少注意项目项目共同获取的信息(如协作过滤基础的信息),该项目包含丰富的项目相似性信息。它从与用户/项目属性图不同的角度提供了信息,对CF建议模型也很有价值。在这项工作中,我们努力研究将两种类型的侧信息(即KGG和项目共振数据数据)纳入模型以维护关系结构以维护关系。为了实现这一目标,我们提议了一个基于可获取的基于图形的国家建议模式(UGREPERE)模型(UGERE)模式,将KGGLE和直径直径项目关系从一个不同的角度提供了信息,同时将我们设计的项目关系与直径关系与直径数据关系演示实体显示。